Category-Theoretical and Topos-Theoretical Frameworks in Machine Learning: A Survey

Yiyang Jia, Guohong Peng, Zheng Yang, Tianhao Chen, Yiyang JIA

Research output: Contribution to journalArticle

Abstract

In this survey, we provide an overview of category theory-derived machine learning from four mainstream perspectives: gradient-based learning, probability-based learning, invariance and equivalence-based learning, and topos-based learning. For the first three topics, we primarily review research in the past five years, updating and expanding on the previous survey by Shiebler et al. The fourth topic, which delves into higher category theory, particularly topos theory, is surveyed for the first time in this paper. In certain machine learning methods, the compositionality of functors plays a vital role, prompting the development of specific categorical frameworks. However, when considering how the global properties of a network reflect in local structures and how geometric properties and semantics are expressed with logic, the topos structure becomes particularly significant and profound.
Translated title of the contributionCategory-Theoretical and Topos-Theoretical Frameworks in Machine Learning: A Survey
Original languageAmerican English
Pages (from-to)204 - 204
JournalAxioms
Volume14
Issue number3
DOIs
StatePublished - 10 Mar 2025

Fingerprint

Dive into the research topics of 'Category-Theoretical and Topos-Theoretical Frameworks in Machine Learning: A Survey'. Together they form a unique fingerprint.

Cite this