30 open-source projects similar to ajoo/nrgboost, ranked by how many features they have in common. Compare stars, activity and what each one does to find the best Nrgboost alternative.
Online Multi-Class LPBoost
code for Variational Boosting: Iteratively Refining Posterior Approximations
Remark: The code is updated from the ICML version. The ICML version corresponds to a commit on May 25, 2018.
Code for a paper InfiniteBoost: building infinite ensembles with gradient descent (arXiv:1706.01109). A. Rogozhnikov, T. Likhomanenko
An implementation of "Multi-Level Network Embedding with Boosted Low-Rank Matrix Approximation" (ASONAM 2019).
CatBoost is a gradient boosting machine learning library used to train decision tree ensembles for regression, classification, and ranking tasks. It functions as a high-performance framework that provides a categorical data processor for transforming non-numeric features, a distributed trainer for large-scale datasets, and GPU acceleration to speed up model construction. The library distinguishes itself through native handling of categorical data and text features, removing the need for manual encoding. It includes a specialized model interpretability tool that leverages SHAP values and featu
This is the code for the paper titled Optimization and Generalization Analysis of Transduction through Gradient Boosting and Application to Multi-scale Graph Neural Networks (arXiv).
XGBoost is a distributed machine learning library for implementing scalable gradient boosting decision trees used for regression, classification, and ranking. It functions as a predictive model framework and a cross-language toolkit, providing a core implementation with native bindings for Python, R, Java, Scala, and C++. The system is designed as a GPU-accelerated library that utilizes CUDA and NCCL to speed up the training of decision tree ensembles. It operates as a distributed framework capable of scaling training and prediction across multi-node clusters and GPU environments to process m
)](https://pypi.org/project/fipepy/) versions](https://img.shields.io/pypi/pyversions/fipepy.svg)](https://pypi.org/project/fipepy/)
This repository contains the code and datasets for the paper "Orthogonal Gradient Boosting for Simpler Additive Rule Ensembles".
This is the implementation for the paper Gradient Boosting with Piece-Wise Linear Regression Trees. We extend gradient boosting to use piecewise linear regression trees (PL Trees), instead of piecewise constant regression trees. PL Trees can accelerate convergence of GBDT. Moreover, our new…
A generic recommender and predictor server for both offline machine learning and recommendation modeling and fast online production serving. MIT licence, oriented to production use (online field experiments in research and typical industrial use)
Implementation of an article
Incorporating richer human inputs including qualitative constraints such as monotonic and synergistic influences has long been adapted inside AI. Inspired by this, we consider the problem of using such influence statements in the successful gradient-boosting framework. We develop a unified…
This is a boosting based transfer learning algorithm for regression tasks (TwoStageTrAdaBoostR2) that is proposed by Pardoe et al. in paper "Boosting for Regression Transfer (ICML 2010)". The program TwoStageTrAdaBoostR2 contains two main classes that are written in scikit-learn style and the…
This repository contains a simple PyTorch implementation of the article Learning Deep ResNet Blocks Sequentially using Boosting Theory.
Yuan Bian, Grace Y. Yi, and Wenqing He (2025). Boosting methods for interval-censored data with regression and classification. In The 13th International Conference on Learning Representations (ICLR 2025). https://openreview.net/pdf?id=DzbUL4AJPP
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This project is a cleaned up version of our PAMI submission "Deep Metric Learning with BIER: Boosting Independent Embeddings Robustly" in tensorflow. It extends our original ICCV version with an adversarial auxiliary loss during training, which improves results. you are planning to use this…
This repository contains the codes needed to reproduce the experiments of our submitted CIKM 2025 Paper
The tutorial 'CalibratedAdaMEC_ExtendedVersion.ipynb' introduces the concepts of asymmetric (cost-sensitive and/or imbalanced class) learning, decision theory and boosting. It briefly describes the results of the paper:
GBRL is a Python-based Gradient Boosting Trees (GBT) library, similar to popular packages such as XGBoost, CatBoost, but specifically designed and optimized for reinforcement learning (RL). GBRL is implemented in C++/CUDA aimed to seamlessly integrate within popular RL libraries.