CVATSep 26, 2023

A Topological Machine Learning Pipeline for Classification

arXiv:2309.15276v115 citationsh-index: 17
Originality Synthesis-oriented
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This work provides an incremental step toward a user-friendly pipeline for classification tasks using persistent homology, aimed at researchers in topological machine learning.

The authors tackled the problem of integrating topological data analysis with machine learning by developing a pipeline that selects optimal filtrations and representation methods for persistence diagrams, achieving performance assessed on benchmark datasets.

In this work, we develop a pipeline that associates Persistence Diagrams to digital data via the most appropriate filtration for the type of data considered. Using a grid search approach, this pipeline determines optimal representation methods and parameters. The development of such a topological pipeline for Machine Learning involves two crucial steps that strongly affect its performance: firstly, digital data must be represented as an algebraic object with a proper associated filtration in order to compute its topological summary, the Persistence Diagram. Secondly, the persistence diagram must be transformed with suitable representation methods in order to be introduced in a Machine Learning algorithm. We assess the performance of our pipeline, and in parallel, we compare the different representation methods on popular benchmark datasets. This work is a first step toward both an easy and ready-to-use pipeline for data classification using persistent homology and Machine Learning, and to understand the theoretical reasons why, given a dataset and a task to be performed, a pair (filtration, topological representation) is better than another.

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