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A graph reading behavior: Geodesic-path tendency

conference contribution
posted on 2023-05-23, 08:41 authored by Huang, W, Eades, P, Hong, S-H
The end result of graph visualization is that people read the graph and understand the data. To make this effective, it is essential to construct visualizations based on how people read graphs. Despite the popularity and importance of graph usage in a variety of application domains, little is known about how people read graphs. The lack of this knowledge has severely limited the effectiveness of graph visualizations. In attempts to understand how people read graphs, we previously observed that people have geodesic-path tendency based on subjective eye tracking data. This paper presents two controlled experiments. One is to approve the existence of the geodesic-path tendency. The other is to examine the effects of this tendency on people in reading graphs. The results show that in performing path search tasks, when eyes encounter a node that has more than one link, links that go toward the target node are more likely to be searched first. The results also indicate that when graphs are drawn with branch links on the path leading away from the target node, graph reading performance can be significantly improved.

History

Publication title

Proceedings of IEEE Pacific Visualization Symposium 2009

Editors

IEEE

Pagination

137-144

ISBN

978-1-4244-4404-5

Department/School

School of Information and Communication Technology

Publisher

IEEE

Place of publication

USA

Event title

IEEE Pacific Visualization Symposium 2009

Event Venue

Beijing, China

Date of Event (Start Date)

2009-04-20

Date of Event (End Date)

2009-04-23

Rights statement

Copyright 20009 IEEE

Repository Status

  • Restricted

Socio-economic Objectives

Expanding knowledge in the information and computing sciences

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