Modularized Implementation of Deep RL Algorithms in PyTorch
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Updated
Apr 16, 2024 - Python
Modularized Implementation of Deep RL Algorithms in PyTorch
Contains high quality implementations of Deep Reinforcement Learning algorithms written in PyTorch
Python package for conformal prediction
A library for ready-made reinforcement learning agents and reusable components for neat prototyping
Conformalized Quantile Regression
Quantile Regression Forests compatible with scikit-learn.
Official Implementation for the "Conffusion: Confidence Intervals for Diffusion Models" paper.
👖 Conformal Tights adds conformal prediction of coherent quantiles and intervals to any scikit-learn regressor or Darts forecaster
Valid and adaptive prediction intervals for probabilistic time series forecasting
Support vector machines (SVMs) and related kernel-based learning algorithms are a well-known class of machine learning algorithms, for non-parametric classification and regression. liquidSVM is an implementation of SVMs whose key features are: fully integrated hyper-parameter selection, extreme speed on both small and large data sets, full flexi…
Image-to-image regression with uncertainty quantification in PyTorch. Take any dataset and train a model to regress images to images with rigorous, distribution-free uncertainty quantification.
Bringing back uncertainty to machine learning.
R package for Bayesian meta-analysis models, using Stan
A Julia package for robust regressions using M-estimators and quantile regressions
Our implementation of the paper "A Multi-Horizon Quantile Recurrent Forecaster"
Using an integrated pinball-loss objective function in various recurrent based deep learning architectures made with keras to simultaneously produce probabilistic forecasts for UK wind, solar, demand and price forecasts.
R package - Quantile Regression Forests, a tree-based ensemble method for estimation of conditional quantiles (Meinshausen, 2006).
Multiple quantiles estimation model maintaining non-crossing condition (or monotone quantile condition) using LightGBM and XGBoost
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