Learning Voting Trees

  • Ariel D. Procaccia ,
  • Aviv Zohar ,
  • Yoni Peleg ,
  • Jeffrey S. Rosenschein

AAAI '07: Proceedings of The Twenty-Second National Conference on Artificial Intelligence |

Published by AAAI Press

Binary voting trees provide a succinct representation for a large and prominent class of voting rules. In this paper, we investigate the PAC-learnability of this class of rules. We show that, while in general a learning algorithm would require an exponential number of samples, 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.