$C^*$-Algebraic Machine Learning: Moving in a New Direction
Abstract
Machine learning has a long collaborative tradition with several fields of mathematics, such as statistics, probability and linear algebra. We propose a new direction for machine learning research: -algebraic ML a cross-fertilization between -algebra and machine learning. The mathematical concept of -algebra is a natural generalization of the space of complex numbers. It enables us to unify existing learning strategies, and construct a new framework for more diverse and information-rich data models. We explain why and how to use -algebras in machine learning, and provide technical considerations that go into the design of -algebraic learning models in the contexts of kernel methods and neural networks. Furthermore, we discuss open questions and challenges in -algebraic ML and give our thoughts for future development and applications.
Cite
@article{arxiv.2402.02637,
title = {$C^*$-Algebraic Machine Learning: Moving in a New Direction},
author = {Yuka Hashimoto and Masahiro Ikeda and Hachem Kadri},
journal= {arXiv preprint arXiv:2402.02637},
year = {2024}
}
Comments
position paper