Seeing is Learning in High Dimensions: The Synergy Between Dimensionality Reduction and Machine Learning

Publication date

2024-03

Authors

Telea, Alexandru C.ORCID 0000-0003-0750-0502ISNI 0000000041071164
Machado dos Reis, AlisterORCID 0000-0002-1129-4628ISNI 000000052413262X
Wang, Yu

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

cc_by

Abstract

High-dimensional data are a key study object for both machine learning (ML) and information visualization. On the visualization side, dimensionality reduction (DR) methods, also called projections, are the most suited techniques for visual exploration of large and high-dimensional datasets. On the ML side, high-dimensional data are generated and processed by classifiers and regressors, and these techniques increasingly require visualization for explanation and exploration. In this paper, we explore how both fields can help each other in achieving their respective aims. In more detail, we present both examples that show how DR can be used to understand and engineer better ML models (seeing helps learning) and also applications of DL for improving the computation of direct and inverse projections (learning helps seeing). We also identify existing limitations of DR methods used to assist ML and of ML techniques applied to improve DR. Based on the above, we propose several high-impact directions for future work that exploit the analyzed ML-DR synergy.

Keywords

Explainable AI, Multidimensional projections, Visual quality metrics, General Computer Science, Computer Science Applications, Computer Networks and Communications, Computer Graphics and Computer-Aided Design, Computational Theory and Mathematics, Artificial Intelligence

Citation

Telea, A, Machado, A & Wang, Y 2024, 'Seeing is Learning in High Dimensions : The Synergy Between Dimensionality Reduction and Machine Learning', SN Computer Science, vol. 5, no. 3, 279. https://doi.org/10.1007/s42979-024-02604-y