Design and Evaluation of Visualizations for Large Value Ranges in Multiple Time Series

  • Rita Borgo
  • , Daniel Braun*
  • , Tatiana von Landesberger
  • , Max Sondag
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

This paper investigates the complex issue of visualizing large value
ranges in multiple time series. We propose the design spaces for this
composed visualization. In two crowdsourced user studies, we test seven
designs: Three state-of-the-art designs, three extensions to existing
designs, and one novel design. We assess five tasks: Maximum and
minimum identification, value discrimination, difference estimation, and
slope assessment. Our results show novel findings: For the minimum
task, where values in low orders of magnitude have to be identified, our
novel height-stack line chart yields the best results. For slope assessment
and all tasks where the maximum value can be used as a proxy for the
correct answer (maximum, discrimination, and estimation), the linear line
graph shows comparable results to all other designs. Moreover, the use
of visual mapping to color supports the perception of mantissa and
magnitude variations. Unexpectedly, our results indicate that increasing
the number of time series does not generally reduce the accuracy of
estimation, discrimination, and identification. Our findings are domain
independent. They provide useful insights for designers seeking to
visualize large value ranges in multiple time series, e.g., for financial,
medical, or meteorological data.
Original languageEnglish
JournalInformation Visualization
Publication statusAccepted/In press - 22 May 2025

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