Semi-Supervised Machine Learning: a Homological Approach

01/27/2023
by   Adrián Inés, et al.
0

In this paper we describe the mathematical foundations of a new approach to semi-supervised Machine Learning. Using techniques of Symbolic Computation and Computer Algebra, we apply the concept of persistent homology to obtain a new semi-supervised learning method.

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