Modularized Implementation of Deep RL Algorithms in PyTorch
-
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.
Multiple quantiles estimation model maintaining non-crossing condition (or monotone quantile condition) using LightGBM and XGBoost
R package - Quantile Regression Forests, a tree-based ensemble method for estimation of conditional quantiles (Meinshausen, 2006).
Add a description, image, and links to the quantile-regression topic page so that developers can more easily learn about it.
To associate your repository with the quantile-regression topic, visit your repo's landing page and select "manage topics."