DocumentCode
964279
Title
Visualizing Causal Semantics Using Animations
Author
Kadaba, N.R. ; Irani, P.P. ; Leboe, J.
Author_Institution
Univ. of Manitoba, Winnipeg
Volume
13
Issue
6
fYear
2007
Firstpage
1254
Lastpage
1261
Abstract
Michotte´s theory of ampliation suggests that causal relationships are perceived by objects animated under appropriate spatiotemporal conditions. We extend the theory of ampliation and propose that the immediate perception of complex causal relations is also dependent on a set of structural and temporal rules. We designed animated representations, based on Michotte´s rules, for showing complex causal relationships or causal semantics. In this paper we describe a set of animations for showing semantics such as causal amplification, causal strength, causal dampening, and causal multiplicity. In a two part study we compared the effectiveness of both the static and animated representations. The first study (N=44) asked participants to recall passages that were previously displayed using both types of representations. Participants were 8% more accurate in recalling causal semantics when they were presented using animations instead of static graphs. In the second study (N=112) we evaluated the intuitiveness of the representations. Our results showed that while users were as accurate with the static graphs as with the animations, they were 9% faster in matching the correct causal statements in the animated condition. Overall our results show that animated diagrams that are designed based on perceptual rules such as those proposed by Michotte have the potential to facilitate comprehension of complex causal relations.
Keywords
behavioural sciences computing; computer animation; data visualisation; Michotte rules; animation; causal amplification; causal dampening; causal multiplicity; causal semantics visualization; causal strength; complex causal relations; static graphs; Animation; Fires; Humans; Iron; Motion pictures; Physics; Spatiotemporal phenomena; Tires; Uncertainty; Visualization; Causality; animated graphs; graph semantics.; perception; semantics; visualization; visualizing cause and effect;
fLanguage
English
Journal_Title
Visualization and Computer Graphics, IEEE Transactions on
Publisher
ieee
ISSN
1077-2626
Type
jour
DOI
10.1109/TVCG.2007.70528
Filename
4376148
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