Title of article
The learnability of voting rules Original Research Article
Author/Authors
Ariel D. Procaccia، نويسنده , , Aviv Zohar، نويسنده , , Yoni Peleg، نويسنده , , Jeffrey S. Rosenschein، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
17
From page
1133
To page
1149
Abstract
Scoring rules and voting trees are two broad and concisely-representable classes of voting rules; scoring rules award points to alternatives according to their position in the preferences of the voters, while voting trees are iterative procedures that select an alternative based on pairwise comparisons. In this paper, we investigate the PAC-learnability of these classes of rules. We demonstrate that the class of scoring rules, as functions from preferences into alternatives, is efficiently learnable in the PAC model. With respect to voting trees, while in general a learning algorithm would require an exponential number of samples, we show that if the number of leaves is polynomial in the size of the set of alternatives, then a polynomial training set suffices. We apply these results in an emerging theory: automated design of voting rules by learning.
Keywords
Computational social choice , Computational learning theory , Multiagent systems
Journal title
Artificial Intelligence
Serial Year
2009
Journal title
Artificial Intelligence
Record number
1207699
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