A Topological Approach for Semi-Supervised Learning
Adri\'an In\'es, C\'esar Dom\'inguez, J\'onathan Heras, Gadea Mata and, Julio Rubio

TL;DR
This paper introduces novel semi-supervised learning methods based on Topological Data Analysis, leveraging homological and connectivity approaches to improve classification performance on various datasets.
Contribution
The work presents two new topological semi-supervised learning methods, applying TDA techniques to enhance data classification with limited labels.
Findings
Methods outperform traditional semi-supervised techniques.
Achieve up to 16% improvement in classification accuracy.
Effective on synthetic, structured, and image datasets.
Abstract
Nowadays, Machine Learning and Deep Learning methods have become the state-of-the-art approach to solve data classification tasks. In order to use those methods, it is necessary to acquire and label a considerable amount of data; however, this is not straightforward in some fields, since data annotation is time consuming and might require expert knowledge. This challenge can be tackled by means of semi-supervised learning methods that take advantage of both labelled and unlabelled data. In this work, we present new semi-supervised learning methods based on techniques from Topological Data Analysis (TDA), a field that is gaining importance for analysing large amounts of data with high variety and dimensionality. In particular, we have created two semi-supervised learning methods following two different topological approaches. In the former, we have used a homological approach that…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Neuroinflammation and Neurodegeneration Mechanisms
