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Blogroll | Top


List of posts by date of publication | Top

  1. Survival analysis with sklearn, glmnet, keras, pytorch, lightgbm, xgboost, nnetsauce, mlsauce Part 2
  2. Any Sklearn Regressor as a Survival Model — Does It Actually Work? Benchmarking vs Established Packages
  3. Conformal Optimization Beats Bayesian Optimization, Optuna and Random Search on 72 classification Datasets
  4. `mlS3` — A Unified S3 Machine Learning Interface in R
  5. One interface, (Almost) Every Classifier: unifiedml v0.2.1
  6. Techtonique dot net is down until further notice
  7. Explaining Time-Series Forecasts with Sensitivity Analysis (ahead::dynrmf and external regressors)
  8. Python version of 'Option pricing using time series models as market price of risk Pt.3'
  9. Option pricing using time series models as market price of risk Pt.3
  10. Explaining Time-Series Forecasts with Exact Shapley Values (ahead::dynrmf with external regressors applied to scenarios)
  11. My Presentation at Risk 2026: Lightweight Transfer Learning for Financial Forecasting
  12. nnetsauce with and without jax for GPU acceleration
  13. Understanding Boosted Configuration Networks (combined neural networks and boosting): An Intuitive Guide Through Their Hyperparameters
  14. R version of Python package survivalist, for model-agnostic survival analysis
  15. Presenting Lightweight Transfer Learning for Financial Forecasting (Risk 2026)
  16. Option pricing using time series models as market price of risk
  17. Enhancing Time Series Forecasting (ahead::ridge2f) with Attention-Based Context Vectors (ahead::contextridge2f)
  18. Overfitting and scaling (on GPU T4) tests on nnetsauce.CustomRegressor
  19. Beyond Cross-validation: Hyperparameter Optimization via Generalization Gap Modeling
  20. GPopt for Machine Learning (hyperparameters' tuning)
  21. rtopy: an R to Python bridge -- novelties
  22. Python examples for 'Beyond Nelson-Siegel and splines: A model- agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  23. Forecasting benchmark: Dynrmf (a new serious competitor in town) vs Theta Method on M-Competitions and Tourism competitition
  24. Finally figured out a way to port python packages to R using uv and reticulate: example with nnetsauce
  25. Overfitting Random Fourier Features: Universal Approximation Property
  26. Counterfactual Scenario Analysis with ahead::ridge2f
  27. Zero-Shot Probabilistic Time Series Forecasting with TabPFN 2.5 and nnetsauce
  28. ARIMA Pricing: Semi-Parametric Market price of risk for Risk-Neutral Pricing (code + preprint)
  29. Analyzing Paper Reviews with LLMs: I Used ChatGPT, DeepSeek, Qwen, Mistral, Gemini, and Claude (and you should too + publish the analysis)
  30. tisthemachinelearner: New Workflow with uv for R Integration of scikit-learn
  31. (ICYMI) RPweave: Unified R + Python + LaTeX System using uv
  32. unifiedml: A Unified Machine Learning Interface for R, is now on CRAN + Discussion about AI replacing humans
  33. Context-aware Theta forecasting Method: Extending Classical Time Series Forecasting with Machine Learning
  34. unifiedml in R: A Unified Machine Learning Interface
  35. Deterministic Shift Adjustment in Arbitrage-Free Pricing (historical to risk-neutral short rates)
  36. New instantaneous short rates models with their deterministic shift adjustment, for historical and risk-neutral simulation
  37. RPweave: Unified R + Python + LaTeX System using uv
  38. GAN-like Synthetic Data Generation Examples (on univariate, multivariate distributions, digits recognition, Fashion-MNIST, stock returns, and Olivetti faces) with DistroSimulator
  39. R port of llama2.c
  40. Native uncertainty quantification for time series with NGBoost
  41. NGBoost (Natural Gradient Boosting) for Regression, Classification, Time Series forecasting and Reserving
  42. Real-time pricing with a pretrained probabilistic stock return model
  43. Combining any model with GARCH(1,1) for probabilistic stock forecasting
  44. Generating Synthetic Data with R-vine Copulas using esgtoolkit in R
  45. Reimagining Equity Solvency Capital Requirement Approximation (one of my Master's Thesis subjects): From Bilinear Interpolation to Probabilistic Machine Learning
  46. Transfer Learning using ahead::ridge2f on synthetic stocks returns Pt.2: synthetic data generation
  47. Transfer Learning using ahead::ridge2f on synthetic stocks returns
  48. I'm supposed to present 'Conformal Predictive Simulations for Univariate Time Series' at COPA CONFERENCE 2025 in London...
  49. external regressors in ahead::dynrmf's interface for Machine learning forecasting
  50. Another interesting decision, now for 'Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  51. Boosting any randomized based learner for regression, classification and univariate/multivariate time series forcasting
  52. New nnetsauce version with CustomBackPropRegressor (CustomRegressor with Backpropagation) and ElasticNet2Regressor (Ridge2 with ElasticNet regularization)
  53. mlsauce (home to a model-agnostic gradient boosting algorithm) can now be installed from PyPI.
  54. A user-friendly graphical interface to techtonique dot net's API (will eventually contain graphics).
  55. Calling =TECHTO_MLCLASSIFICATION for Machine Learning supervised CLASSIFICATION in Excel is just a matter of copying and pasting
  56. Calling =TECHTO_MLREGRESSION for Machine Learning supervised regression in Excel is just a matter of copying and pasting
  57. Calling =TECHTO_RESERVING and =TECHTO_MLRESERVING for claims triangle reserving in Excel is just a matter of copying and pasting
  58. Calling =TECHTO_SURVIVAL for Survival Analysis in Excel is just a matter of copying and pasting
  59. Calling =TECHTO_SIMULATION for Stochastic Simulation in Excel is just a matter of copying and pasting
  60. Calling =TECHTO_FORECAST for forecasting in Excel is just a matter of copying and pasting
  61. Random Vector Functional Link (RVFL) artificial neural network with 2 regularization parameters successfully used for forecasting/synthetic simulation in professional settings: Extensions (including Bayesian)
  62. R version of 'Backpropagating quasi-randomized neural networks'
  63. Backpropagating quasi-randomized neural networks
  64. Beyond ARMA-GARCH: leveraging any statistical model for volatility forecasting
  65. Stacked generalization (Machine Learning model stacking) + conformal prediction for forecasting with ahead::mlf
  66. An Overfitting dilemma: XGBoost Default Hyperparameters vs GenericBooster + LinearRegression Default Hyperparameters
  67. Programming language-agnostic reserving using RidgeCV, LightGBM, XGBoost, and ExtraTrees Machine Learning models
  68. Free R, Python and SQL editors in techtonique dot net
  69. Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation
  70. scikit-learn, glmnet, xgboost, lightgbm, pytorch, keras, nnetsauce in probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  71. R version of Probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  72. Probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  73. Python version of Beyond ARMA-GARCH: leveraging model-agnostic Quasi-Randomized networks and conformal prediction for nonparametric probabilistic stock forecasting (ML-ARCH)
  74. Beyond ARMA-GARCH: leveraging model-agnostic Machine Learning and conformal prediction for nonparametric probabilistic stock forecasting (ML-ARCH)
  75. Permutations and SHAPley values for feature importance in techtonique dot net's API (with R + Python + the command line)
  76. Which patient is going to survive longer? Another guide to using techtonique dot net's API (with R + Python + the command line) for survival analysis
  77. A Guide to Using techtonique.net's API and rush for simulating and plotting Stochastic Scenarios
  78. Simulating Stochastic Scenarios with Diffusion Models: A Guide to Using techtonique.net's API for the purpose
  79. Will my apartment in 5th avenue be overpriced or not? Harnessing the power of www.techtonique.net (+ xgboost, lightgbm, catboost) to find out
  80. How long must I wait until something happens: A Comprehensive Guide to Survival Analysis via an API
  81. Harnessing the Power of techtonique.net: A Comprehensive Guide to Machine Learning Classification via an API
  82. Quantile regression with any regressor -- Examples with RandomForestRegressor, RidgeCV, KNeighborsRegressor
  83. Survival stacking: survival analysis translated as supervised classification in R and Python
  84. 'Bayesian' optimization of hyperparameters in a R machine learning model using the bayesianrvfl package
  85. A lightweight interface to scikit-learn in R: Bayesian and Conformal prediction
  86. A lightweight interface to scikit-learn in R Pt.2: probabilistic time series forecasting in conjunction with ahead::dynrmf
  87. Extending the Theta forecasting method to GLMs, GAMs, GLMBOOST and attention: benchmarking on Tourism, M1, M3 and M4 competition data sets (28000 series)
  88. Extending the Theta forecasting method to GLMs and attention
  89. Nonlinear conformalized Generalized Linear Models (GLMs) with R package 'rvfl' (and other models)
  90. Probabilistic Time Series Forecasting (predictive simulations) in Microsoft Excel using Python, xlwings lite and www.techtonique.net
  91. Conformalize (improved prediction intervals and simulations) any R Machine Learning model with misc::conformalize
  92. My poster for the 18th FINANCIAL RISKS INTERNATIONAL FORUM by Institut Louis Bachelier/Fondation du Risque/Europlace Institute of Finance
  93. Interpretable probabilistic kernel ridge regression using Matérn 3/2 kernels
  94. (News from) Probabilistic Forecasting of univariate and multivariate Time Series using Quasi-Randomized Neural Networks (Ridge2) and Conformal Prediction
  95. Word-Online: re-creating Karpathy's char-RNN (with supervised linear online learning of word embeddings) for text completion
  96. CRAN-like repository for most recent releases of Techtonique's R packages
  97. Presenting 'Online Probabilistic Estimation of Carbon Beta and Carbon Shapley Values for Financial and Climate Risk' at Institut Louis Bachelier
  98. Web app with DeepSeek R1 and Hugging Face API for chatting
  99. tisthemachinelearner: A Lightweight interface to scikit-learn with 2 classes, Classifier and Regressor (in Python and R)
  100. R version of survivalist: Probabilistic model-agnostic survival analysis using scikit-learn, xgboost, lightgbm (and conformal prediction)
  101. Model-agnostic global Survival Prediction of Patients with Myeloid Leukemia in QRT/Gustave Roussy Challenge (challengedata.ens.fr): Python's survivalist Quickstart
  102. A simple test of the martingale hypothesis in esgtoolkit
  103. Command Line Interface (CLI) for techtonique.net's API
  104. Gradient-Boosting and Boostrap aggregating anything (alert: high performance): Part5, easier install and Rust backend
  105. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on? Part2: 1311 time series from the Tourism competition
  106. Techtonique is out! (with a tutorial in various programming languages and formats)
  107. Univariate and Multivariate Probabilistic Forecasting with nnetsauce and TabPFN
  108. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on?
  109. Python and Interactive dashboard version of Stock price forecasting with Deep Learning: throwing power at the problem (and why it won't make you rich)
  110. Stock price forecasting with Deep Learning: throwing power at the problem (and why it won't make you rich)
  111. No-code Machine Learning Cross-validation and Interpretability in techtonique.net
  112. survivalist: Probabilistic model-agnostic survival analysis using scikit-learn, glmnet, xgboost, lightgbm, pytorch, keras, nnetsauce and mlsauce
  113. Model-agnostic 'Bayesian' optimization (for hyperparameter tuning) using conformalized surrogates in GPopt
  114. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS Pt.2: Generic Gradient Boosting
  115. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS
  116. Unified interface and conformal prediction (calibrated prediction intervals) for R package forecast (and 'affiliates')
  117. GLMNet in Python: Generalized Linear Models
  118. Gradient-Boosting anything (alert: high performance): Part4, Time series forecasting
  119. Predictive scenarios simulation in R, Python and Excel using Techtonique API
  120. Chat with your tabular data in www.techtonique.net
  121. Gradient-Boosting anything (alert: high performance): Part3, Histogram-based boosting
  122. R editor and SQL console (in addition to Python editors) in www.techtonique.net
  123. R and Python consoles + JupyterLite in www.techtonique.net
  124. Gradient-Boosting anything (alert: high performance): Part2, R version
  125. Gradient-Boosting anything (alert: high performance)
  126. Benchmarking 30 statistical/Machine Learning models on the VN1 Forecasting -- Accuracy challenge
  127. Automated random variable distribution inference using Kullback-Leibler divergence and simulating best-fitting distribution
  128. Forecasting in Excel using Techtonique's Machine Learning APIs under the hood
  129. Techtonique web app for data-driven decisions using Mathematics, Statistics, Machine Learning, and Data Visualization
  130. Parallel for loops (Map or Reduce) + New versions of nnetsauce and ahead
  131. Adaptive (online/streaming) learning with uncertainty quantification using Polyak averaging in learningmachine
  132. New versions of nnetsauce and ahead
  133. Prediction sets and prediction intervals for conformalized Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  134. Quick/automated R package development workflow (assuming you're using macOS or Linux) Part2
  135. R package development workflow (assuming you're using macOS or Linux)
  136. A new method for deriving a nonparametric confidence interval for the mean
  137. Conformalized adaptive (online/streaming) learning using learningmachine in Python and R
  138. Bayesian (nonlinear) adaptive learning
  139. Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  140. Copulas for uncertainty quantification in time series forecasting
  141. Forecasting uncertainty: sequential split conformal prediction + Block bootstrap (web app)
  142. learningmachine for Python (new version)
  143. learningmachine v2.0.0: Machine Learning with explanations and uncertainty quantification
  144. My presentation at ISF 2024 conference (slides with nnetsauce probabilistic forecasting news)
  145. 10 uncertainty quantification methods in nnetsauce forecasting
  146. Forecasting with XGBoost embedded in Quasi-Randomized Neural Networks
  147. Forecasting Monthly Airline Passenger Numbers with Quasi-Randomized Neural Networks
  148. Automated hyperparameter tuning using any conformalized surrogate
  149. Recognizing handwritten digits with Ridge2Classifier
  150. Forecasting the Economy
  151. A detailed introduction to Deep Quasi-Randomized 'neural' networks
  152. Probability of receiving a loan; using learningmachine
  153. mlsauce's `v0.18.2`: various examples and benchmarks with dimension reduction
  154. mlsauce's `v0.17.0`: boosting with Elastic Net, polynomials and heterogeneity in explanatory variables
  155. mlsauce's `v0.13.0`: taking into account inputs heterogeneity through clustering
  156. mlsauce's `v0.12.0`: prediction intervals for LSBoostRegressor
  157. Conformalized predictive simulations for univariate time series on more than 250 data sets
  158. learningmachine v1.1.2: for Python
  159. learningmachine v1.0.0: prediction intervals around the probability of the event 'a tumor being malignant'
  160. Bayesian inference and conformal prediction (prediction intervals) in nnetsauce v0.18.1
  161. Multiple examples of Machine Learning forecasting with ahead
  162. rtopy (v0.1.1): calling R functions in Python
  163. ahead forecasting (v0.10.0): fast time series model calibration and Python plots
  164. A plethora of datasets at your fingertips Part3: how many times do couples cheat on each other?
  165. nnetsauce's introduction as of 2024-02-11 (new version 0.17.0)
  166. Tuning Machine Learning models with GPopt's new version Part 2
  167. Tuning Machine Learning models with GPopt's new version
  168. Subsampling continuous and discrete response variables
  169. DeepMTS, a Deep Learning Model for Multivariate Time Series
  170. A classifier that's very accurate (and deep) Pt.2: there are > 90 classifiers in nnetsauce
  171. learningmachine: prediction intervals for conformalized Kernel ridge regression and Random Forest
  172. A plethora of datasets at your fingertips Part2: how many times do couples cheat on each other? Descriptive analytics, interpretability and prediction intervals using conformal prediction
  173. Diffusion models in Python with esgtoolkit (Part2)
  174. Diffusion models in Python with esgtoolkit
  175. Julia packaging at the command line
  176. Quasi-randomized nnetworks in Julia, Python and R
  177. A plethora of datasets at your fingertips
  178. A classifier that's very accurate (and deep)
  179. mlsauce version 0.8.10: Statistical/Machine Learning with Python and R
  180. AutoML in nnetsauce (randomized and quasi-randomized nnetworks) Pt.2: multivariate time series forecasting
  181. AutoML in nnetsauce (randomized and quasi-randomized nnetworks)
  182. Version v0.14.0 of nnetsauce for R and Python
  183. A diffusion model: G2++
  184. Diffusion models in ESGtoolkit + announcements
  185. An infinity of time series forecasting models in nnetsauce (Part 2 with uncertainty quantification)
  186. (News from) forecasting in Python with ahead (progress bars and plots)
  187. Forecasting in Python with ahead
  188. Risk-neutralize simulations
  189. Comparing cross-validation results using crossval_ml and boxplots
  190. Reminder
  191. Did you ask ChatGPT about who you are?
  192. A new version of nnetsauce (randomized and quasi-randomized 'neural' networks)
  193. Simple interfaces to the forecasting API
  194. A web application for forecasting in Python, R, Ruby, C#, JavaScript, PHP, Go, Rust, Java, MATLAB, etc.
  195. Prediction intervals (not only) for Boosted Configuration Networks in Python
  196. Boosted Configuration (neural) Networks Pt. 2
  197. Boosted Configuration (_neural_) Networks for classification
  198. A Machine Learning workflow using Techtonique
  199. Super Mario Bros © in the browser using PyScript
  200. News from ESGtoolkit, ycinterextra, and nnetsauce
  201. Explaining a Keras _neural_ network predictions with the-teller
  202. New version of nnetsauce -- various quasi-randomized networks
  203. A dashboard illustrating bivariate time series forecasting with `ahead`
  204. Hundreds of Statistical/Machine Learning models for univariate time series, using ahead, ranger, xgboost, and caret
  205. Forecasting with `ahead` (Python version)
  206. Tuning and interpreting LSBoost
  207. Time series cross-validation using `crossvalidation` (Part 2)
  208. Fast and scalable forecasting with ahead::ridge2f
  209. Automatic Forecasting with `ahead::dynrmf` and Ridge regression
  210. Forecasting with `ahead`
  211. Classification using linear regression
  212. `crossvalidation` and random search for calibrating support vector machines
  213. parallel grid search cross-validation using `crossvalidation`
  214. `crossvalidation` on R-universe, plus a classification example
  215. Documentation and source code for GPopt, a package for Bayesian optimization
  216. Hyperparameters tuning with GPopt
  217. A forecasting tool (API) with examples in curl, R, Python
  218. Bayesian Optimization with GPopt Part 2 (save and resume)
  219. Bayesian Optimization with GPopt
  220. Compatibility of nnetsauce and mlsauce with scikit-learn
  221. Explaining xgboost predictions with the teller
  222. An infinity of time series models in nnetsauce
  223. New activation functions in mlsauce's LSBoost
  224. 2020 recap, Gradient Boosting, Generalized Linear Models, AdaOpt with nnetsauce and mlsauce
  225. A deeper learning architecture in nnetsauce
  226. Classify penguins with nnetsauce's MultitaskClassifier
  227. Bayesian forecasting for uni/multivariate time series
  228. Generalized nonlinear models in nnetsauce
  229. Boosting nonlinear penalized least squares
  230. Statistical/Machine Learning explainability using Kernel Ridge Regression surrogates
  231. NEWS
  232. A glimpse into my PhD journey
  233. Submitting R package to CRAN
  234. Simulation of dependent variables in ESGtoolkit
  235. Forecasting lung disease progression
  236. New nnetsauce
  237. Technical documentation
  238. A new version of nnetsauce, and a new Techtonique website
  239. Back next week, and a few announcements
  240. Explainable 'AI' using Gradient Boosted randomized networks Pt2 (the Lasso)
  241. LSBoost: Explainable 'AI' using Gradient Boosted randomized networks (with examples in R and Python)
  242. nnetsauce version 0.5.0, randomized neural networks on GPU
  243. Maximizing your tip as a waiter (Part 2)
  244. New version of mlsauce, with Gradient Boosted randomized networks and stump decision trees
  245. Announcements
  246. Parallel AdaOpt classification
  247. Comments section and other news
  248. Maximizing your tip as a waiter
  249. AdaOpt classification on MNIST handwritten digits (without preprocessing)
  250. AdaOpt (a probabilistic classifier based on a mix of multivariable optimization and nearest neighbors) for R
  251. AdaOpt
  252. Custom errors for cross-validation using crossval::crossval_ml
  253. Documentation+Pypi for the `teller`, a model-agnostic tool for Machine Learning explainability
  254. Encoding your categorical variables based on the response variable and correlations
  255. Linear model, xgboost and randomForest cross-validation using crossval::crossval_ml
  256. Grid search cross-validation using crossval
  257. Documentation for the querier, a query language for Data Frames
  258. Time series cross-validation using crossval
  259. On model specification, identification, degrees of freedom and regularization
  260. Import data into the querier (now on Pypi), a query language for Data Frames
  261. R notebooks for nnetsauce
  262. Version 0.4.0 of nnetsauce, with fruits and breast cancer classification
  263. Create a specific feed in your Jekyll blog
  264. Git/Github for contributing to package development
  265. Feedback forms for contributing
  266. nnetsauce for R
  267. A new version of nnetsauce (v0.3.1)
  268. ESGtoolkit, a tool for Monte Carlo simulation (v0.2.0)
  269. Search bar, new year 2020
  270. 2019 Recap, the nnetsauce, the teller and the querier
  271. Understanding model interactions with the `teller`
  272. Using the `teller` on a classifier
  273. Benchmarking the querier's verbs
  274. Composing the querier's verbs for data wrangling
  275. Comparing and explaining model predictions with the teller
  276. Tests for the significance of marginal effects in the teller
  277. Introducing the teller
  278. Introducing the querier
  279. Prediction intervals for nnetsauce models
  280. Using R in Python for statistical learning/data science
  281. Model calibration with `crossval`
  282. Bagging in the nnetsauce
  283. Adaboost learning with nnetsauce
  284. Change in blog's presentation
  285. nnetsauce on Pypi
  286. More nnetsauce (examples of use)
  287. nnetsauce
  288. crossval
  289. test


Categories | Top

Forecasting

  1. ARIMA Pricing: Semi-Parametric Market price of risk for Risk-Neutral Pricing (code + preprint)
  2. My poster for the 18th FINANCIAL RISKS INTERNATIONAL FORUM by Institut Louis Bachelier/Fondation du Risque/Europlace Institute of Finance
  3. Presenting 'Online Probabilistic Estimation of Carbon Beta and Carbon Shapley Values for Financial and Climate Risk' at Institut Louis Bachelier
  4. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on? Part2: 1311 time series from the Tourism competition
  5. Techtonique is out! (with a tutorial in various programming languages and formats)
  6. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on?
  7. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS
  8. My presentation at ISF 2024 conference (slides with nnetsauce probabilistic forecasting news)
  9. 10 uncertainty quantification methods in nnetsauce forecasting
  10. Forecasting with XGBoost embedded in Quasi-Randomized Neural Networks
  11. Forecasting Monthly Airline Passenger Numbers with Quasi-Randomized Neural Networks
  12. DeepMTS, a Deep Learning Model for Multivariate Time Series
  13. Version v0.14.0 of nnetsauce for R and Python
  14. An infinity of time series forecasting models in nnetsauce (Part 2 with uncertainty quantification)
  15. (News from) forecasting in Python with ahead (progress bars and plots)
  16. Forecasting in Python with ahead
  17. Simple interfaces to the forecasting API
  18. A web application for forecasting in Python, R, Ruby, C#, JavaScript, PHP, Go, Rust, Java, MATLAB, etc.
  19. A dashboard illustrating bivariate time series forecasting with `ahead`
  20. Hundreds of Statistical/Machine Learning models for univariate time series, using ahead, ranger, xgboost, and caret

Misc

  1. Analyzing Paper Reviews with LLMs: I Used ChatGPT, DeepSeek, Qwen, Mistral, Gemini, and Claude (and you should too + publish the analysis)
  2. A plethora of datasets at your fingertips Part2: how many times do couples cheat on each other? Descriptive analytics, interpretability and prediction intervals using conformal prediction
  3. Julia packaging at the command line
  4. A plethora of datasets at your fingertips
  5. Risk-neutralize simulations
  6. Comparing cross-validation results using crossval_ml and boxplots
  7. Reminder
  8. Did you ask ChatGPT about who you are?
  9. A web application for forecasting in Python, R, Ruby, C#, JavaScript, PHP, Go, Rust, Java, MATLAB, etc.
  10. Boosted Configuration (_neural_) Networks for classification
  11. Super Mario Bros © in the browser using PyScript
  12. News from ESGtoolkit, ycinterextra, and nnetsauce
  13. Time series cross-validation using `crossvalidation` (Part 2)
  14. Fast and scalable forecasting with ahead::ridge2f
  15. Automatic Forecasting with `ahead::dynrmf` and Ridge regression
  16. Forecasting with `ahead`
  17. Documentation and source code for GPopt, a package for Bayesian optimization
  18. Hyperparameters tuning with GPopt
  19. A forecasting tool (API) with examples in curl, R, Python
  20. Bayesian Optimization with GPopt Part 2 (save and resume)
  21. Bayesian Optimization with GPopt
  22. 2020 recap, Gradient Boosting, Generalized Linear Models, AdaOpt with nnetsauce and mlsauce
  23. Statistical/Machine Learning explainability using Kernel Ridge Regression surrogates
  24. NEWS
  25. A glimpse into my PhD journey
  26. Forecasting lung disease progression
  27. New nnetsauce
  28. Technical documentation
  29. A new version of nnetsauce, and a new Techtonique website
  30. Back next week, and a few announcements
  31. Maximizing your tip as a waiter (Part 2)
  32. New version of mlsauce, with Gradient Boosted randomized networks and stump decision trees
  33. Announcements
  34. Comments section and other news
  35. Maximizing your tip as a waiter
  36. Custom errors for cross-validation using crossval::crossval_ml
  37. Encoding your categorical variables based on the response variable and correlations
  38. Linear model, xgboost and randomForest cross-validation using crossval::crossval_ml
  39. Grid search cross-validation using crossval
  40. Time series cross-validation using crossval
  41. On model specification, identification, degrees of freedom and regularization
  42. Create a specific feed in your Jekyll blog
  43. Git/Github for contributing to package development
  44. Feedback forms for contributing
  45. Change in blog's presentation
  46. test

Python

  1. Survival analysis with sklearn, glmnet, keras, pytorch, lightgbm, xgboost, nnetsauce, mlsauce Part 2
  2. Any Sklearn Regressor as a Survival Model — Does It Actually Work? Benchmarking vs Established Packages
  3. Conformal Optimization Beats Bayesian Optimization, Optuna and Random Search on 72 classification Datasets
  4. Techtonique dot net is down until further notice
  5. Python version of 'Option pricing using time series models as market price of risk Pt.3'
  6. nnetsauce with and without jax for GPU acceleration
  7. Understanding Boosted Configuration Networks (combined neural networks and boosting): An Intuitive Guide Through Their Hyperparameters
  8. R version of Python package survivalist, for model-agnostic survival analysis
  9. Overfitting and scaling (on GPU T4) tests on nnetsauce.CustomRegressor
  10. GPopt for Machine Learning (hyperparameters' tuning)
  11. rtopy: an R to Python bridge -- novelties
  12. Python examples for 'Beyond Nelson-Siegel and splines: A model- agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  13. Finally figured out a way to port python packages to R using uv and reticulate: example with nnetsauce
  14. Overfitting Random Fourier Features: Universal Approximation Property
  15. Zero-Shot Probabilistic Time Series Forecasting with TabPFN 2.5 and nnetsauce
  16. Analyzing Paper Reviews with LLMs: I Used ChatGPT, DeepSeek, Qwen, Mistral, Gemini, and Claude (and you should too + publish the analysis)
  17. tisthemachinelearner: New Workflow with uv for R Integration of scikit-learn
  18. (ICYMI) RPweave: Unified R + Python + LaTeX System using uv
  19. New instantaneous short rates models with their deterministic shift adjustment, for historical and risk-neutral simulation
  20. RPweave: Unified R + Python + LaTeX System using uv
  21. GAN-like Synthetic Data Generation Examples (on univariate, multivariate distributions, digits recognition, Fashion-MNIST, stock returns, and Olivetti faces) with DistroSimulator
  22. Native uncertainty quantification for time series with NGBoost
  23. NGBoost (Natural Gradient Boosting) for Regression, Classification, Time Series forecasting and Reserving
  24. Real-time pricing with a pretrained probabilistic stock return model
  25. Reimagining Equity Solvency Capital Requirement Approximation (one of my Master's Thesis subjects): From Bilinear Interpolation to Probabilistic Machine Learning
  26. Transfer Learning using ahead::ridge2f on synthetic stocks returns Pt.2: synthetic data generation
  27. Transfer Learning using ahead::ridge2f on synthetic stocks returns
  28. I'm supposed to present 'Conformal Predictive Simulations for Univariate Time Series' at COPA CONFERENCE 2025 in London...
  29. Another interesting decision, now for 'Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  30. Boosting any randomized based learner for regression, classification and univariate/multivariate time series forcasting
  31. New nnetsauce version with CustomBackPropRegressor (CustomRegressor with Backpropagation) and ElasticNet2Regressor (Ridge2 with ElasticNet regularization)
  32. mlsauce (home to a model-agnostic gradient boosting algorithm) can now be installed from PyPI.
  33. A user-friendly graphical interface to techtonique dot net's API (will eventually contain graphics).
  34. Calling =TECHTO_MLCLASSIFICATION for Machine Learning supervised CLASSIFICATION in Excel is just a matter of copying and pasting
  35. Calling =TECHTO_MLREGRESSION for Machine Learning supervised regression in Excel is just a matter of copying and pasting
  36. Calling =TECHTO_RESERVING and =TECHTO_MLRESERVING for claims triangle reserving in Excel is just a matter of copying and pasting
  37. Calling =TECHTO_SURVIVAL for Survival Analysis in Excel is just a matter of copying and pasting
  38. Calling =TECHTO_SIMULATION for Stochastic Simulation in Excel is just a matter of copying and pasting
  39. Calling =TECHTO_FORECAST for forecasting in Excel is just a matter of copying and pasting
  40. Random Vector Functional Link (RVFL) artificial neural network with 2 regularization parameters successfully used for forecasting/synthetic simulation in professional settings: Extensions (including Bayesian)
  41. Backpropagating quasi-randomized neural networks
  42. Beyond ARMA-GARCH: leveraging any statistical model for volatility forecasting
  43. An Overfitting dilemma: XGBoost Default Hyperparameters vs GenericBooster + LinearRegression Default Hyperparameters
  44. Free R, Python and SQL editors in techtonique dot net
  45. Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation
  46. scikit-learn, glmnet, xgboost, lightgbm, pytorch, keras, nnetsauce in probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  47. Probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  48. Python version of Beyond ARMA-GARCH: leveraging model-agnostic Quasi-Randomized networks and conformal prediction for nonparametric probabilistic stock forecasting (ML-ARCH)
  49. Permutations and SHAPley values for feature importance in techtonique dot net's API (with R + Python + the command line)
  50. Which patient is going to survive longer? Another guide to using techtonique dot net's API (with R + Python + the command line) for survival analysis
  51. A Guide to Using techtonique.net's API and rush for simulating and plotting Stochastic Scenarios
  52. Simulating Stochastic Scenarios with Diffusion Models: A Guide to Using techtonique.net's API for the purpose
  53. Will my apartment in 5th avenue be overpriced or not? Harnessing the power of www.techtonique.net (+ xgboost, lightgbm, catboost) to find out
  54. How long must I wait until something happens: A Comprehensive Guide to Survival Analysis via an API
  55. Harnessing the Power of techtonique.net: A Comprehensive Guide to Machine Learning Classification via an API
  56. Quantile regression with any regressor -- Examples with RandomForestRegressor, RidgeCV, KNeighborsRegressor
  57. Survival stacking: survival analysis translated as supervised classification in R and Python
  58. Extending the Theta forecasting method to GLMs and attention
  59. Probabilistic Time Series Forecasting (predictive simulations) in Microsoft Excel using Python, xlwings lite and www.techtonique.net
  60. My poster for the 18th FINANCIAL RISKS INTERNATIONAL FORUM by Institut Louis Bachelier/Fondation du Risque/Europlace Institute of Finance
  61. Word-Online: re-creating Karpathy's char-RNN (with supervised linear online learning of word embeddings) for text completion
  62. Presenting 'Online Probabilistic Estimation of Carbon Beta and Carbon Shapley Values for Financial and Climate Risk' at Institut Louis Bachelier
  63. Web app with DeepSeek R1 and Hugging Face API for chatting
  64. tisthemachinelearner: A Lightweight interface to scikit-learn with 2 classes, Classifier and Regressor (in Python and R)
  65. Model-agnostic global Survival Prediction of Patients with Myeloid Leukemia in QRT/Gustave Roussy Challenge (challengedata.ens.fr): Python's survivalist Quickstart
  66. Command Line Interface (CLI) for techtonique.net's API
  67. Gradient-Boosting and Boostrap aggregating anything (alert: high performance): Part5, easier install and Rust backend
  68. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on? Part2: 1311 time series from the Tourism competition
  69. Techtonique is out! (with a tutorial in various programming languages and formats)
  70. Univariate and Multivariate Probabilistic Forecasting with nnetsauce and TabPFN
  71. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on?
  72. Python and Interactive dashboard version of Stock price forecasting with Deep Learning: throwing power at the problem (and why it won't make you rich)
  73. No-code Machine Learning Cross-validation and Interpretability in techtonique.net
  74. survivalist: Probabilistic model-agnostic survival analysis using scikit-learn, glmnet, xgboost, lightgbm, pytorch, keras, nnetsauce and mlsauce
  75. Model-agnostic 'Bayesian' optimization (for hyperparameter tuning) using conformalized surrogates in GPopt
  76. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS Pt.2: Generic Gradient Boosting
  77. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS
  78. GLMNet in Python: Generalized Linear Models
  79. Gradient-Boosting anything (alert: high performance): Part4, Time series forecasting
  80. Predictive scenarios simulation in R, Python and Excel using Techtonique API
  81. Chat with your tabular data in www.techtonique.net
  82. Gradient-Boosting anything (alert: high performance): Part3, Histogram-based boosting
  83. R editor and SQL console (in addition to Python editors) in www.techtonique.net
  84. R and Python consoles + JupyterLite in www.techtonique.net
  85. Gradient-Boosting anything (alert: high performance)
  86. Benchmarking 30 statistical/Machine Learning models on the VN1 Forecasting -- Accuracy challenge
  87. Forecasting in Excel using Techtonique's Machine Learning APIs under the hood
  88. Techtonique web app for data-driven decisions using Mathematics, Statistics, Machine Learning, and Data Visualization
  89. Parallel for loops (Map or Reduce) + New versions of nnetsauce and ahead
  90. Adaptive (online/streaming) learning with uncertainty quantification using Polyak averaging in learningmachine
  91. New versions of nnetsauce and ahead
  92. Prediction sets and prediction intervals for conformalized Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  93. Conformalized adaptive (online/streaming) learning using learningmachine in Python and R
  94. Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  95. Copulas for uncertainty quantification in time series forecasting
  96. Forecasting uncertainty: sequential split conformal prediction + Block bootstrap (web app)
  97. learningmachine for Python (new version)
  98. My presentation at ISF 2024 conference (slides with nnetsauce probabilistic forecasting news)
  99. 10 uncertainty quantification methods in nnetsauce forecasting
  100. Forecasting with XGBoost embedded in Quasi-Randomized Neural Networks
  101. Forecasting Monthly Airline Passenger Numbers with Quasi-Randomized Neural Networks
  102. Automated hyperparameter tuning using any conformalized surrogate
  103. Recognizing handwritten digits with Ridge2Classifier
  104. A detailed introduction to Deep Quasi-Randomized 'neural' networks
  105. Probability of receiving a loan; using learningmachine
  106. mlsauce's `v0.18.2`: various examples and benchmarks with dimension reduction
  107. mlsauce's `v0.17.0`: boosting with Elastic Net, polynomials and heterogeneity in explanatory variables
  108. mlsauce's `v0.13.0`: taking into account inputs heterogeneity through clustering
  109. mlsauce's `v0.12.0`: prediction intervals for LSBoostRegressor
  110. learningmachine v1.1.2: for Python
  111. Bayesian inference and conformal prediction (prediction intervals) in nnetsauce v0.18.1
  112. rtopy (v0.1.1): calling R functions in Python
  113. ahead forecasting (v0.10.0): fast time series model calibration and Python plots
  114. A plethora of datasets at your fingertips Part3: how many times do couples cheat on each other?
  115. nnetsauce's introduction as of 2024-02-11 (new version 0.17.0)
  116. Tuning Machine Learning models with GPopt's new version Part 2
  117. Tuning Machine Learning models with GPopt's new version
  118. Subsampling continuous and discrete response variables
  119. DeepMTS, a Deep Learning Model for Multivariate Time Series
  120. A classifier that's very accurate (and deep) Pt.2: there are > 90 classifiers in nnetsauce
  121. A plethora of datasets at your fingertips Part2: how many times do couples cheat on each other? Descriptive analytics, interpretability and prediction intervals using conformal prediction
  122. Diffusion models in Python with esgtoolkit (Part2)
  123. Diffusion models in Python with esgtoolkit
  124. Quasi-randomized nnetworks in Julia, Python and R
  125. A plethora of datasets at your fingertips
  126. A classifier that's very accurate (and deep)
  127. mlsauce version 0.8.10: Statistical/Machine Learning with Python and R
  128. AutoML in nnetsauce (randomized and quasi-randomized nnetworks) Pt.2: multivariate time series forecasting
  129. AutoML in nnetsauce (randomized and quasi-randomized nnetworks)
  130. Version v0.14.0 of nnetsauce for R and Python
  131. An infinity of time series forecasting models in nnetsauce (Part 2 with uncertainty quantification)
  132. (News from) forecasting in Python with ahead (progress bars and plots)
  133. Forecasting in Python with ahead
  134. Did you ask ChatGPT about who you are?
  135. A new version of nnetsauce (randomized and quasi-randomized 'neural' networks)
  136. Simple interfaces to the forecasting API
  137. A web application for forecasting in Python, R, Ruby, C#, JavaScript, PHP, Go, Rust, Java, MATLAB, etc.
  138. Prediction intervals (not only) for Boosted Configuration Networks in Python
  139. A Machine Learning workflow using Techtonique
  140. Super Mario Bros © in the browser using PyScript
  141. News from ESGtoolkit, ycinterextra, and nnetsauce
  142. Explaining a Keras _neural_ network predictions with the-teller
  143. New version of nnetsauce -- various quasi-randomized networks
  144. A dashboard illustrating bivariate time series forecasting with `ahead`
  145. Forecasting with `ahead` (Python version)
  146. Tuning and interpreting LSBoost
  147. Classification using linear regression
  148. Documentation and source code for GPopt, a package for Bayesian optimization
  149. Hyperparameters tuning with GPopt
  150. A forecasting tool (API) with examples in curl, R, Python
  151. Bayesian Optimization with GPopt Part 2 (save and resume)
  152. Bayesian Optimization with GPopt
  153. Compatibility of nnetsauce and mlsauce with scikit-learn
  154. Explaining xgboost predictions with the teller
  155. An infinity of time series models in nnetsauce
  156. 2020 recap, Gradient Boosting, Generalized Linear Models, AdaOpt with nnetsauce and mlsauce
  157. A deeper learning architecture in nnetsauce
  158. Generalized nonlinear models in nnetsauce
  159. Boosting nonlinear penalized least squares
  160. Technical documentation
  161. A new version of nnetsauce, and a new Techtonique website
  162. Back next week, and a few announcements
  163. Explainable 'AI' using Gradient Boosted randomized networks Pt2 (the Lasso)
  164. LSBoost: Explainable 'AI' using Gradient Boosted randomized networks (with examples in R and Python)
  165. nnetsauce version 0.5.0, randomized neural networks on GPU
  166. Maximizing your tip as a waiter (Part 2)
  167. Parallel AdaOpt classification
  168. Maximizing your tip as a waiter
  169. AdaOpt classification on MNIST handwritten digits (without preprocessing)
  170. AdaOpt
  171. Documentation+Pypi for the `teller`, a model-agnostic tool for Machine Learning explainability
  172. Encoding your categorical variables based on the response variable and correlations
  173. Documentation for the querier, a query language for Data Frames
  174. Import data into the querier (now on Pypi), a query language for Data Frames
  175. Version 0.4.0 of nnetsauce, with fruits and breast cancer classification
  176. A new version of nnetsauce (v0.3.1)
  177. Using R in Python for statistical learning/data science
  178. nnetsauce on Pypi

QuasiRandomizedNN

  1. Gradient-Boosting anything (alert: high performance): Part4, Time series forecasting
  2. Gradient-Boosting anything (alert: high performance): Part3, Histogram-based boosting
  3. My presentation at ISF 2024 conference (slides with nnetsauce probabilistic forecasting news)
  4. 10 uncertainty quantification methods in nnetsauce forecasting
  5. Forecasting with XGBoost embedded in Quasi-Randomized Neural Networks
  6. Forecasting Monthly Airline Passenger Numbers with Quasi-Randomized Neural Networks
  7. Automated hyperparameter tuning using any conformalized surrogate
  8. Recognizing handwritten digits with Ridge2Classifier
  9. A plethora of datasets at your fingertips Part3: how many times do couples cheat on each other?
  10. nnetsauce's introduction as of 2024-02-11 (new version 0.17.0)
  11. DeepMTS, a Deep Learning Model for Multivariate Time Series
  12. A classifier that's very accurate (and deep) Pt.2: there are > 90 classifiers in nnetsauce
  13. Quasi-randomized nnetworks in Julia, Python and R
  14. A classifier that's very accurate (and deep)
  15. AutoML in nnetsauce (randomized and quasi-randomized nnetworks) Pt.2: multivariate time series forecasting
  16. AutoML in nnetsauce (randomized and quasi-randomized nnetworks)
  17. Version v0.14.0 of nnetsauce for R and Python
  18. An infinity of time series forecasting models in nnetsauce (Part 2 with uncertainty quantification)
  19. A new version of nnetsauce (randomized and quasi-randomized 'neural' networks)
  20. New version of nnetsauce -- various quasi-randomized networks
  21. Tuning and interpreting LSBoost
  22. Classification using linear regression
  23. An infinity of time series models in nnetsauce
  24. A deeper learning architecture in nnetsauce
  25. Classify penguins with nnetsauce's MultitaskClassifier
  26. Bayesian forecasting for uni/multivariate time series
  27. New nnetsauce
  28. Technical documentation
  29. A new version of nnetsauce, and a new Techtonique website
  30. Back next week, and a few announcements
  31. nnetsauce version 0.5.0, randomized neural networks on GPU
  32. R notebooks for nnetsauce
  33. Version 0.4.0 of nnetsauce, with fruits and breast cancer classification
  34. Feedback forms for contributing
  35. nnetsauce for R
  36. A new version of nnetsauce (v0.3.1)
  37. 2019 Recap, the nnetsauce, the teller and the querier
  38. Prediction intervals for nnetsauce models
  39. Bagging in the nnetsauce
  40. Adaboost learning with nnetsauce
  41. nnetsauce on Pypi
  42. More nnetsauce (examples of use)
  43. nnetsauce

R

  1. `mlS3` — A Unified S3 Machine Learning Interface in R
  2. One interface, (Almost) Every Classifier: unifiedml v0.2.1
  3. Techtonique dot net is down until further notice
  4. Explaining Time-Series Forecasts with Sensitivity Analysis (ahead::dynrmf and external regressors)
  5. Option pricing using time series models as market price of risk Pt.3
  6. Explaining Time-Series Forecasts with Exact Shapley Values (ahead::dynrmf with external regressors applied to scenarios)
  7. My Presentation at Risk 2026: Lightweight Transfer Learning for Financial Forecasting
  8. nnetsauce with and without jax for GPU acceleration
  9. Understanding Boosted Configuration Networks (combined neural networks and boosting): An Intuitive Guide Through Their Hyperparameters
  10. R version of Python package survivalist, for model-agnostic survival analysis
  11. Presenting Lightweight Transfer Learning for Financial Forecasting (Risk 2026)
  12. Option pricing using time series models as market price of risk
  13. Enhancing Time Series Forecasting (ahead::ridge2f) with Attention-Based Context Vectors (ahead::contextridge2f)
  14. Beyond Cross-validation: Hyperparameter Optimization via Generalization Gap Modeling
  15. rtopy: an R to Python bridge -- novelties
  16. Python examples for 'Beyond Nelson-Siegel and splines: A model- agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  17. Forecasting benchmark: Dynrmf (a new serious competitor in town) vs Theta Method on M-Competitions and Tourism competitition
  18. Finally figured out a way to port python packages to R using uv and reticulate: example with nnetsauce
  19. Overfitting Random Fourier Features: Universal Approximation Property
  20. Counterfactual Scenario Analysis with ahead::ridge2f
  21. ARIMA Pricing: Semi-Parametric Market price of risk for Risk-Neutral Pricing (code + preprint)
  22. Analyzing Paper Reviews with LLMs: I Used ChatGPT, DeepSeek, Qwen, Mistral, Gemini, and Claude (and you should too + publish the analysis)
  23. tisthemachinelearner: New Workflow with uv for R Integration of scikit-learn
  24. (ICYMI) RPweave: Unified R + Python + LaTeX System using uv
  25. unifiedml: A Unified Machine Learning Interface for R, is now on CRAN + Discussion about AI replacing humans
  26. Context-aware Theta forecasting Method: Extending Classical Time Series Forecasting with Machine Learning
  27. unifiedml in R: A Unified Machine Learning Interface
  28. Deterministic Shift Adjustment in Arbitrage-Free Pricing (historical to risk-neutral short rates)
  29. New instantaneous short rates models with their deterministic shift adjustment, for historical and risk-neutral simulation
  30. RPweave: Unified R + Python + LaTeX System using uv
  31. GAN-like Synthetic Data Generation Examples (on univariate, multivariate distributions, digits recognition, Fashion-MNIST, stock returns, and Olivetti faces) with DistroSimulator
  32. R port of llama2.c
  33. Native uncertainty quantification for time series with NGBoost
  34. Real-time pricing with a pretrained probabilistic stock return model
  35. Combining any model with GARCH(1,1) for probabilistic stock forecasting
  36. Generating Synthetic Data with R-vine Copulas using esgtoolkit in R
  37. Reimagining Equity Solvency Capital Requirement Approximation (one of my Master's Thesis subjects): From Bilinear Interpolation to Probabilistic Machine Learning
  38. Transfer Learning using ahead::ridge2f on synthetic stocks returns Pt.2: synthetic data generation
  39. Transfer Learning using ahead::ridge2f on synthetic stocks returns
  40. I'm supposed to present 'Conformal Predictive Simulations for Univariate Time Series' at COPA CONFERENCE 2025 in London...
  41. external regressors in ahead::dynrmf's interface for Machine learning forecasting
  42. Another interesting decision, now for 'Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation'
  43. A user-friendly graphical interface to techtonique dot net's API (will eventually contain graphics).
  44. Calling =TECHTO_MLCLASSIFICATION for Machine Learning supervised CLASSIFICATION in Excel is just a matter of copying and pasting
  45. Calling =TECHTO_MLREGRESSION for Machine Learning supervised regression in Excel is just a matter of copying and pasting
  46. Calling =TECHTO_RESERVING and =TECHTO_MLRESERVING for claims triangle reserving in Excel is just a matter of copying and pasting
  47. Calling =TECHTO_SURVIVAL for Survival Analysis in Excel is just a matter of copying and pasting
  48. Calling =TECHTO_SIMULATION for Stochastic Simulation in Excel is just a matter of copying and pasting
  49. Calling =TECHTO_FORECAST for forecasting in Excel is just a matter of copying and pasting
  50. Random Vector Functional Link (RVFL) artificial neural network with 2 regularization parameters successfully used for forecasting/synthetic simulation in professional settings: Extensions (including Bayesian)
  51. R version of 'Backpropagating quasi-randomized neural networks'
  52. Beyond ARMA-GARCH: leveraging any statistical model for volatility forecasting
  53. Stacked generalization (Machine Learning model stacking) + conformal prediction for forecasting with ahead::mlf
  54. Programming language-agnostic reserving using RidgeCV, LightGBM, XGBoost, and ExtraTrees Machine Learning models
  55. Free R, Python and SQL editors in techtonique dot net
  56. Beyond Nelson-Siegel and splines: A model-agnostic Machine Learning framework for discount curve calibration, interpolation and extrapolation
  57. R version of Probabilistic Machine Learning (for longitudinal data) Reserving (work in progress)
  58. Beyond ARMA-GARCH: leveraging model-agnostic Machine Learning and conformal prediction for nonparametric probabilistic stock forecasting (ML-ARCH)
  59. Permutations and SHAPley values for feature importance in techtonique dot net's API (with R + Python + the command line)
  60. Which patient is going to survive longer? Another guide to using techtonique dot net's API (with R + Python + the command line) for survival analysis
  61. A Guide to Using techtonique.net's API and rush for simulating and plotting Stochastic Scenarios
  62. Simulating Stochastic Scenarios with Diffusion Models: A Guide to Using techtonique.net's API for the purpose
  63. Will my apartment in 5th avenue be overpriced or not? Harnessing the power of www.techtonique.net (+ xgboost, lightgbm, catboost) to find out
  64. How long must I wait until something happens: A Comprehensive Guide to Survival Analysis via an API
  65. Harnessing the Power of techtonique.net: A Comprehensive Guide to Machine Learning Classification via an API
  66. Quantile regression with any regressor -- Examples with RandomForestRegressor, RidgeCV, KNeighborsRegressor
  67. Survival stacking: survival analysis translated as supervised classification in R and Python
  68. 'Bayesian' optimization of hyperparameters in a R machine learning model using the bayesianrvfl package
  69. A lightweight interface to scikit-learn in R: Bayesian and Conformal prediction
  70. A lightweight interface to scikit-learn in R Pt.2: probabilistic time series forecasting in conjunction with ahead::dynrmf
  71. Extending the Theta forecasting method to GLMs, GAMs, GLMBOOST and attention: benchmarking on Tourism, M1, M3 and M4 competition data sets (28000 series)
  72. Extending the Theta forecasting method to GLMs and attention
  73. Nonlinear conformalized Generalized Linear Models (GLMs) with R package 'rvfl' (and other models)
  74. Conformalize (improved prediction intervals and simulations) any R Machine Learning model with misc::conformalize
  75. My poster for the 18th FINANCIAL RISKS INTERNATIONAL FORUM by Institut Louis Bachelier/Fondation du Risque/Europlace Institute of Finance
  76. Interpretable probabilistic kernel ridge regression using Matérn 3/2 kernels
  77. (News from) Probabilistic Forecasting of univariate and multivariate Time Series using Quasi-Randomized Neural Networks (Ridge2) and Conformal Prediction
  78. Word-Online: re-creating Karpathy's char-RNN (with supervised linear online learning of word embeddings) for text completion
  79. CRAN-like repository for most recent releases of Techtonique's R packages
  80. Presenting 'Online Probabilistic Estimation of Carbon Beta and Carbon Shapley Values for Financial and Climate Risk' at Institut Louis Bachelier
  81. Web app with DeepSeek R1 and Hugging Face API for chatting
  82. tisthemachinelearner: A Lightweight interface to scikit-learn with 2 classes, Classifier and Regressor (in Python and R)
  83. R version of survivalist: Probabilistic model-agnostic survival analysis using scikit-learn, xgboost, lightgbm (and conformal prediction)
  84. A simple test of the martingale hypothesis in esgtoolkit
  85. Command Line Interface (CLI) for techtonique.net's API
  86. Gradient-Boosting and Boostrap aggregating anything (alert: high performance): Part5, easier install and Rust backend
  87. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on? Part2: 1311 time series from the Tourism competition
  88. Techtonique is out! (with a tutorial in various programming languages and formats)
  89. Just got a paper on conformal prediction REJECTED by International Journal of Forecasting despite evidence on 30,000 time series (and more). What's going on?
  90. Stock price forecasting with Deep Learning: throwing power at the problem (and why it won't make you rich)
  91. No-code Machine Learning Cross-validation and Interpretability in techtonique.net
  92. You can beat Forecasting LLMs (Large Language Models a.k.a foundation models) with nnetsauce.MTS
  93. Unified interface and conformal prediction (calibrated prediction intervals) for R package forecast (and 'affiliates')
  94. GLMNet in Python: Generalized Linear Models
  95. Gradient-Boosting anything (alert: high performance): Part4, Time series forecasting
  96. Predictive scenarios simulation in R, Python and Excel using Techtonique API
  97. Chat with your tabular data in www.techtonique.net
  98. Gradient-Boosting anything (alert: high performance): Part3, Histogram-based boosting
  99. R editor and SQL console (in addition to Python editors) in www.techtonique.net
  100. R and Python consoles + JupyterLite in www.techtonique.net
  101. Gradient-Boosting anything (alert: high performance): Part2, R version
  102. Gradient-Boosting anything (alert: high performance)
  103. Automated random variable distribution inference using Kullback-Leibler divergence and simulating best-fitting distribution
  104. Techtonique web app for data-driven decisions using Mathematics, Statistics, Machine Learning, and Data Visualization
  105. Parallel for loops (Map or Reduce) + New versions of nnetsauce and ahead
  106. Adaptive (online/streaming) learning with uncertainty quantification using Polyak averaging in learningmachine
  107. New versions of nnetsauce and ahead
  108. Prediction sets and prediction intervals for conformalized Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  109. Quick/automated R package development workflow (assuming you're using macOS or Linux) Part2
  110. R package development workflow (assuming you're using macOS or Linux)
  111. A new method for deriving a nonparametric confidence interval for the mean
  112. Conformalized adaptive (online/streaming) learning using learningmachine in Python and R
  113. Bayesian (nonlinear) adaptive learning
  114. Auto XGBoost, Auto LightGBM, Auto CatBoost, Auto GradientBoosting
  115. Forecasting uncertainty: sequential split conformal prediction + Block bootstrap (web app)
  116. learningmachine v2.0.0: Machine Learning with explanations and uncertainty quantification
  117. Forecasting the Economy
  118. A detailed introduction to Deep Quasi-Randomized 'neural' networks
  119. Probability of receiving a loan; using learningmachine
  120. mlsauce's `v0.18.2`: various examples and benchmarks with dimension reduction
  121. Conformalized predictive simulations for univariate time series on more than 250 data sets
  122. learningmachine v1.0.0: prediction intervals around the probability of the event 'a tumor being malignant'
  123. Multiple examples of Machine Learning forecasting with ahead
  124. rtopy (v0.1.1): calling R functions in Python
  125. ahead forecasting (v0.10.0): fast time series model calibration and Python plots
  126. A classifier that's very accurate (and deep) Pt.2: there are > 90 classifiers in nnetsauce
  127. learningmachine: prediction intervals for conformalized Kernel ridge regression and Random Forest
  128. A plethora of datasets at your fingertips Part2: how many times do couples cheat on each other? Descriptive analytics, interpretability and prediction intervals using conformal prediction
  129. Diffusion models in Python with esgtoolkit (Part2)
  130. Diffusion models in Python with esgtoolkit
  131. Quasi-randomized nnetworks in Julia, Python and R
  132. A plethora of datasets at your fingertips
  133. A classifier that's very accurate (and deep)
  134. mlsauce version 0.8.10: Statistical/Machine Learning with Python and R
  135. Version v0.14.0 of nnetsauce for R and Python
  136. A diffusion model: G2++
  137. Diffusion models in ESGtoolkit + announcements
  138. Risk-neutralize simulations
  139. Comparing cross-validation results using crossval_ml and boxplots
  140. Did you ask ChatGPT about who you are?
  141. A new version of nnetsauce (randomized and quasi-randomized 'neural' networks)
  142. Simple interfaces to the forecasting API
  143. A web application for forecasting in Python, R, Ruby, C#, JavaScript, PHP, Go, Rust, Java, MATLAB, etc.
  144. Boosted Configuration (neural) Networks Pt. 2
  145. Boosted Configuration (_neural_) Networks for classification
  146. News from ESGtoolkit, ycinterextra, and nnetsauce
  147. New version of nnetsauce -- various quasi-randomized networks
  148. A dashboard illustrating bivariate time series forecasting with `ahead`
  149. Hundreds of Statistical/Machine Learning models for univariate time series, using ahead, ranger, xgboost, and caret
  150. Time series cross-validation using `crossvalidation` (Part 2)
  151. Fast and scalable forecasting with ahead::ridge2f
  152. Automatic Forecasting with `ahead::dynrmf` and Ridge regression
  153. Forecasting with `ahead`
  154. `crossvalidation` and random search for calibrating support vector machines
  155. parallel grid search cross-validation using `crossvalidation`
  156. `crossvalidation` on R-universe, plus a classification example
  157. A forecasting tool (API) with examples in curl, R, Python
  158. An infinity of time series models in nnetsauce
  159. New activation functions in mlsauce's LSBoost
  160. 2020 recap, Gradient Boosting, Generalized Linear Models, AdaOpt with nnetsauce and mlsauce
  161. Classify penguins with nnetsauce's MultitaskClassifier
  162. Bayesian forecasting for uni/multivariate time series
  163. Boosting nonlinear penalized least squares
  164. Statistical/Machine Learning explainability using Kernel Ridge Regression surrogates
  165. Submitting R package to CRAN
  166. Simulation of dependent variables in ESGtoolkit
  167. Forecasting lung disease progression
  168. Explainable 'AI' using Gradient Boosted randomized networks Pt2 (the Lasso)
  169. LSBoost: Explainable 'AI' using Gradient Boosted randomized networks (with examples in R and Python)
  170. nnetsauce version 0.5.0, randomized neural networks on GPU
  171. Maximizing your tip as a waiter (Part 2)
  172. Maximizing your tip as a waiter
  173. AdaOpt classification on MNIST handwritten digits (without preprocessing)
  174. AdaOpt (a probabilistic classifier based on a mix of multivariable optimization and nearest neighbors) for R
  175. Custom errors for cross-validation using crossval::crossval_ml
  176. Encoding your categorical variables based on the response variable and correlations
  177. Linear model, xgboost and randomForest cross-validation using crossval::crossval_ml
  178. Grid search cross-validation using crossval
  179. Time series cross-validation using crossval
  180. On model specification, identification, degrees of freedom and regularization
  181. R notebooks for nnetsauce
  182. Version 0.4.0 of nnetsauce, with fruits and breast cancer classification
  183. Feedback forms for contributing
  184. nnetsauce for R
  185. ESGtoolkit, a tool for Monte Carlo simulation (v0.2.0)
  186. Using R in Python for statistical learning/data science
  187. Model calibration with `crossval`
  188. crossval