A Unified Comparison of User Modeling Techniques for Predicting Data
Interaction and Detecting Exploration Bias
- URL: http://arxiv.org/abs/2208.05021v1
- Date: Tue, 9 Aug 2022 19:51:10 GMT
- Title: A Unified Comparison of User Modeling Techniques for Predicting Data
Interaction and Detecting Exploration Bias
- Authors: Sunwoo Ha, Shayan Monadjemi, Roman Garnett, and Alvitta Ottley
- Abstract summary: We compare and rank eight user modeling algorithms based on their performance on a diverse set of four user study datasets.
Based on our findings, we highlight open challenges and new directions for analyzing user interactions and visualization provenance.
- Score: 17.518601254380275
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The visual analytics community has proposed several user modeling algorithms
to capture and analyze users' interaction behavior in order to assist users in
data exploration and insight generation. For example, some can detect
exploration biases while others can predict data points that the user will
interact with before that interaction occurs. Researchers believe this
collection of algorithms can help create more intelligent visual analytics
tools. However, the community lacks a rigorous evaluation and comparison of
these existing techniques. As a result, there is limited guidance on which
method to use and when. Our paper seeks to fill in this missing gap by
comparing and ranking eight user modeling algorithms based on their performance
on a diverse set of four user study datasets. We analyze exploration bias
detection, data interaction prediction, and algorithmic complexity, among other
measures. Based on our findings, we highlight open challenges and new
directions for analyzing user interactions and visualization provenance.
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