A Two-step Approach for Interest Estimation from Gaze Behavior in Digital Catalog Browsing
Abstract
:Introduction
Research objective
- Observation 1. Users frequently switch their browsing states, e.g., from “simply grasping information about items” to “actively comparing items based on their interest”;
- Observation 2. Users do not always take into account all the attributes of displayed items but rather focus on a subset of them.
Contributions
Organization of this paper
Related Work
Analysis of values behind decision making
Estimation of internal states behind user behavior
Internal and external factors of gaze behavior
Gaze behavior and decision phase
Methods
Two-step approach to estimating user interests
AOF detection by short-term analysis
Interest estimation using a generative model
- Input:
(a training set of AOF sequences);
- Output: {pr}r (the degree of association between aspects and attribute values) and {θ(s)}s (the users’ interests in training sessions).
- Input: {pr}r and
(the AOF sequence during a session);
- Output: θ(s) (the user’s interest during the session).
Evaluation
Participants
Design
Procedure
- Step 1. The participant was given a task (first two columns in Table 1).
- Step 2. The accuracy of the eye tracker’s calibrated parameters was confirmed.
- Step 3. The content was displayed, and the participant was asked to select one PC.
- Step 4. After the participant reported having made a selection, we asked which PC the participant had selected.
Results
Discussion
Dynamics of user interests
Number of aspects
Temporal patterns of gaze targets
Effect of visual saliency and content design
Conclusion
Ethics and Conflict of Interest
Acknowledgments
Appendix
References
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Shimonishi, K.; Kawashima, H. A Two-step Approach for Interest Estimation from Gaze Behavior in Digital Catalog Browsing. J. Eye Mov. Res. 2020, 13, 1-17. https://doi.org/10.16910/jemr.13.1.4
Shimonishi K, Kawashima H. A Two-step Approach for Interest Estimation from Gaze Behavior in Digital Catalog Browsing. Journal of Eye Movement Research. 2020; 13(1):1-17. https://doi.org/10.16910/jemr.13.1.4
Chicago/Turabian StyleShimonishi, Kei, and Hiroaki Kawashima. 2020. "A Two-step Approach for Interest Estimation from Gaze Behavior in Digital Catalog Browsing" Journal of Eye Movement Research 13, no. 1: 1-17. https://doi.org/10.16910/jemr.13.1.4
APA StyleShimonishi, K., & Kawashima, H. (2020). A Two-step Approach for Interest Estimation from Gaze Behavior in Digital Catalog Browsing. Journal of Eye Movement Research, 13(1), 1-17. https://doi.org/10.16910/jemr.13.1.4