English

A Topological-Framework to Improve Analysis of Machine Learning Model Performance

Machine Learning 2021-07-13 v1 Computer Vision and Pattern Recognition General Topology

Abstract

As both machine learning models and the datasets on which they are evaluated have grown in size and complexity, the practice of using a few summary statistics to understand model performance has become increasingly problematic. This is particularly true in real-world scenarios where understanding model failure on certain subpopulations of the data is of critical importance. In this paper we propose a topological framework for evaluating machine learning models in which a dataset is treated as a "space" on which a model operates. This provides us with a principled way to organize information about model performance at both the global level (over the entire test set) and also the local level (on specific subpopulations). Finally, we describe a topological data structure, presheaves, which offer a convenient way to store and analyze model performance between different subpopulations.

Keywords

Cite

@article{arxiv.2107.04714,
  title  = {A Topological-Framework to Improve Analysis of Machine Learning Model Performance},
  author = {Henry Kvinge and Colby Wight and Sarah Akers and Scott Howland and Woongjo Choi and Xiaolong Ma and Luke Gosink and Elizabeth Jurrus and Keerti Kappagantula and Tegan H. Emerson},
  journal= {arXiv preprint arXiv:2107.04714},
  year   = {2021}
}

Comments

6 pages

R2 v1 2026-06-24T04:03:37.758Z