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Bibliographic Details
Main Authors: Smelser, Kiran, Miller, Jacob, Kobourov, Stephen
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.07724
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author Smelser, Kiran
Miller, Jacob
Kobourov, Stephen
author_facet Smelser, Kiran
Miller, Jacob
Kobourov, Stephen
contents Stress is among the most commonly employed quality metrics and optimization criteria for dimension reduction projections of high dimensional data. Complex, high dimensional data is ubiquitous across many scientific disciplines, including machine learning, biology, and the social sciences. One of the primary methods of visualizing these datasets is with two dimensional scatter plots that visually capture some properties of the data. Because visually determining the accuracy of these plots is challenging, researchers often use quality metrics to measure projection accuracy or faithfulness to the full data. One of the most commonly employed metrics, normalized stress, is sensitive to uniform scaling of the projection, despite this act not meaningfully changing anything about the projection. We investigate the effect of scaling on stress and other distance based quality metrics analytically and empirically by showing just how much the values change and how this affects dimension reduction technique evaluations. We introduce a simple technique to make normalized stress scale invariant and show that it accurately captures expected behavior on a small benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2408_07724
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle "Normalized Stress" is Not Normalized: How to Interpret Stress Correctly
Smelser, Kiran
Miller, Jacob
Kobourov, Stephen
Machine Learning
Stress is among the most commonly employed quality metrics and optimization criteria for dimension reduction projections of high dimensional data. Complex, high dimensional data is ubiquitous across many scientific disciplines, including machine learning, biology, and the social sciences. One of the primary methods of visualizing these datasets is with two dimensional scatter plots that visually capture some properties of the data. Because visually determining the accuracy of these plots is challenging, researchers often use quality metrics to measure projection accuracy or faithfulness to the full data. One of the most commonly employed metrics, normalized stress, is sensitive to uniform scaling of the projection, despite this act not meaningfully changing anything about the projection. We investigate the effect of scaling on stress and other distance based quality metrics analytically and empirically by showing just how much the values change and how this affects dimension reduction technique evaluations. We introduce a simple technique to make normalized stress scale invariant and show that it accurately captures expected behavior on a small benchmark.
title "Normalized Stress" is Not Normalized: How to Interpret Stress Correctly
topic Machine Learning
url https://arxiv.org/abs/2408.07724