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Designing machine learning workflows with an application to topological data analysis

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  • Eric Cawi
  • Patricio S La Rosa
  • Arye Nehorai

Abstract

In this paper we define the concept of the Machine Learning Morphism (MLM) as a fundamental building block to express operations performed in machine learning such as data preprocessing, feature extraction, and model training. Inspired by statistical learning, MLMs are morphisms whose parameters are minimized via a risk function. We explore operations such as composition of MLMs and when sets of MLMs form a vector space. These operations are used to build a machine learning workflow from data preprocessing to final task completion. We examine the Mapper Algorithm from Topological Data Analysis as an MLM, and build several workflows for binary classification incorporating Mapper on Hospital Readmissions and Credit Evaluation datasets. The advantage of this framework lies in the ability to easily build, organize, and compare multiple workflows, and allows joint optimization of parameters across multiple steps in an application.

Suggested Citation

  • Eric Cawi & Patricio S La Rosa & Arye Nehorai, 2019. "Designing machine learning workflows with an application to topological data analysis," PLOS ONE, Public Library of Science, vol. 14(12), pages 1-26, December.
  • Handle: RePEc:plo:pone00:0225577
    DOI: 10.1371/journal.pone.0225577
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    1. Gamble, Jennifer & Heo, Giseon, 2010. "Exploring uses of persistent homology for statistical analysis of landmark-based shape data," Journal of Multivariate Analysis, Elsevier, vol. 101(9), pages 2184-2199, October.
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