robust-regresssion
Here are 26 public repositories matching this topic...
Solve many kinds of least-squares and matrix-recovery problems
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Oct 29, 2023 - Julia
Robust Gaussian Process with Iterative Trimming
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Jun 13, 2021 - Jupyter Notebook
Robust estimations from distribution structures: Mean.
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Mar 29, 2024 - R
MATLAB implementation of "Provable Dynamic Robust PCA or Robust Subspace tracking", IEEE Transactions on Information Theory, 2019.
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May 27, 2020 - MATLAB
{gslnls}: GSL multi-start nonlinear least-squares fitting in R
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Aug 19, 2025 - R
This is an open source library that can be used to autofocus telescopes. It uses a novel algorithm based on robust statistics. For a preprint, see https://arxiv.org/abs/2201.12466 .The library is currently used in Astro Photography tool (APT) https://www.astrophotography.app/
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Jun 29, 2022 - C++
Scikit learn compatible constrained and robust polynomial regression in Python
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Mar 27, 2025 - Python
Robust estimations from distribution structures: Central moments.
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Mar 29, 2024 - R
This is the implementation of the five regression methods Least Square (LS), Regularized Least Square (RLS), LASSO, Robust Regression (RR) and Bayesian Regression (BR).
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Mar 1, 2019 - Python
R Package implementing the Penalized Elastic Net S- and MM-Estimator for Linear Regression
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Jul 23, 2025 - C++
ML Coursework focused on solving Computational Finance and Risk Assessment models
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Nov 22, 2017 - Jupyter Notebook
Python implementation of RANSAC algorithm
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Dec 2, 2021 - Jupyter Notebook
Regression algorithm implementaion from scratch with python (OLS, LASSO, Ridge, robust regression)
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Dec 23, 2024 - Python
This project was carried out as part of fulfilment of the B.Sc. (Hons.) Statistics degree at Sister Nivedita University which explores the application of various linear regression techniques for predicting wine quality
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Sep 5, 2025 - Jupyter Notebook
Regression for Boston Housing price prediction: Linear, Multiple, Robust, OLS, Regularization (Ridge-l1 norm, LASSO-l2 norm, ElasticNet)
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Mar 4, 2019 - Jupyter Notebook
A collection of projects completed in STAT courses.
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Jan 14, 2022 - HTML
2021 Fall term, CSE 701 Project 03
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Dec 21, 2021 - C++
In this repository, using the statistical software R, are been analyzed robust techniques to estimate multivariate linear regression in presence of outliers, using the Bootstrap, a simulation method where the construction of sample distribution of given statistics occurring through resampling the same observed sample.
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Nov 27, 2019 - R
In this project I have implemented 15 different types of regression algorithms including Linear Regression, KNN Regressor, Decision Tree Regressor, RandomForest Regressor, XGBoost, CatBoost., LightGBM, etc. Along with it I have also performed Hyper Paramter Optimization & Cross Validation.
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Mar 16, 2023 - Jupyter Notebook
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