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Bibliographic Details
Main Author: Jin, Yuanzhe
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.22556
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author Jin, Yuanzhe
author_facet Jin, Yuanzhe
contents Evaluating the performance of closely matched machine learning(ML) models under specific conditions has long been a focus of researchers in the field of machine learning. The Rashomon set is a collection of closely matched ML models, encompassing a wide range of models with similar accuracies but different structures. Traditionally, the analysis of these sets has focused on vertical structural analysis, which involves comparing the corresponding features at various levels within the ML models. However, there has been a lack of effective visualization methods for horizontally comparing multiple models with specific features. We propose the VAR visualization solution. VAR uses visualization to perform comparisons of ML models within the Rashomon set. This solution combines heatmaps and scatter plots to facilitate the comparison. With the help of VAR, ML model developers can identify the optimal model under specific conditions and better understand the Rashomon set's overall characteristics.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22556
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VAR: Visual Analysis for Rashomon Set of Machine Learning Models' Performance
Jin, Yuanzhe
Machine Learning
Evaluating the performance of closely matched machine learning(ML) models under specific conditions has long been a focus of researchers in the field of machine learning. The Rashomon set is a collection of closely matched ML models, encompassing a wide range of models with similar accuracies but different structures. Traditionally, the analysis of these sets has focused on vertical structural analysis, which involves comparing the corresponding features at various levels within the ML models. However, there has been a lack of effective visualization methods for horizontally comparing multiple models with specific features. We propose the VAR visualization solution. VAR uses visualization to perform comparisons of ML models within the Rashomon set. This solution combines heatmaps and scatter plots to facilitate the comparison. With the help of VAR, ML model developers can identify the optimal model under specific conditions and better understand the Rashomon set's overall characteristics.
title VAR: Visual Analysis for Rashomon Set of Machine Learning Models' Performance
topic Machine Learning
url https://arxiv.org/abs/2507.22556