Histogram binning revisited with a focus on human perception

Histogram binning revisited with a focus on human perception

Abstract

This paper presents a quantitative user study to evaluate how well users can visually perceive the underlying data distribution from a histogram representation. We used different sample and bin sizes and four different distributions (uniform, normal, bimodal, and gamma). The study results confirm that, in general, more bins correlate with fewer errors by the viewers. However, upon a certain number of bins, the error rate cannot be improved by adding more bins. By comparing our study results with the outcomes of existing mathematical models for histogram binning (e.g., Sturges' formula, Scott's normal reference rule, the Rice Rule, or Freedman-Diaconis' choice), we can see that most of them overestimate the number of bins necessary to make the distribution visible to a human viewer.

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Authors
  • Sahann, Raphael
  • Möller, Torsten
  • Schmidt, Johanna
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Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
IEEE VIS 2021
Divisions
Visualization and Data Analysis
Event Location
online
Event Type
Conference
Event Dates
25.10.2021-29.10.2021
Date
28 October 2021
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