ET-COME#
Equilibrium Transport with Conformal Minority Expansion
Welcome to ET-COME’s documentation! This project presents a novel ensemble method for handling class imbalance through equilibrium transport with conformal minority expansion.
Quick Links:
Getting Started — Installation and quick start guide
API Documentation — Complete API reference
Release Notes — Version history and changelog
References — Research papers and citations
Additional Notes — Implementation details and notes
Key Features:
Epistemic uncertainty identification for admissibility
Risk-targeted optimal transport for synthesis placement
OOB-based conformal screening for consistency
Ensemble learning approach for imbalanced classification
Comprehensive experimental framework
Publication-ready implementation
About the Paper:
ET-COME is an ensemble method designed to address class imbalance in machine learning. It combines optimal transport with conformal prediction to generate synthetic minority samples in regions where the ensemble is genuinely uncertain.
For detailed information about the method, results, and experiments, please refer to the accompanying research paper and the Additional Notes section.