2024
DOI: 10.1007/s42979-024-02604-y
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Seeing is Learning in High Dimensions: The Synergy Between Dimensionality Reduction and Machine Learning

Alexandru Telea,
Alister Machado,
Yu Wang

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 fi… Show more

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