Experimental Assessment of Aggregation Principles in Argumentation-enabled Collective Intelligence
April 03, 2016 Β· Declared Dead Β· π ACM Trans. Internet Techn.
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Authors
Edmond Awad, Jean-FranΓ§ois Bonnefon, Martin Caminada, Thomas Malone, Iyad Rahwan
arXiv ID
1604.00681
Category
cs.AI: Artificial Intelligence
Citations
6
Venue
ACM Trans. Internet Techn.
Last Checked
4 months ago
Abstract
On the Web, there is always a need to aggregate opinions from the crowd (as in posts, social networks, forums, etc.). Different mechanisms have been implemented to capture these opinions such as "Like" in Facebook, "Favorite" in Twitter, thumbs-up/down, flagging, and so on. However, in more contested domains (e.g. Wikipedia, political discussion, and climate change discussion) these mechanisms are not sufficient since they only deal with each issue independently without considering the relationships between different claims. We can view a set of conflicting arguments as a graph in which the nodes represent arguments and the arcs between these nodes represent the defeat relation. A group of people can then collectively evaluate such graphs. To do this, the group must use a rule to aggregate their individual opinions about the entire argument graph. Here, we present the first experimental evaluation of different principles commonly employed by aggregation rules presented in the literature. We use randomized controlled experiments to investigate which principles people consider better at aggregating opinions under different conditions. Our analysis reveals a number of factors, not captured by traditional formal models, that play an important role in determining the efficacy of aggregation. These results help bring formal models of argumentation closer to real-world application.
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