Efficient Inference for Distributions on Permutations
Huang, Jonathan, Guestrin, Carlos, Guibas, Leonidas J.
–Neural Information Processing Systems
Permutations are ubiquitous in many real world problems, such as voting, rankings and data association. Representing uncertainty over permutations is challenging, since there are n! possibilities, and typical compact representations such as graphical models cannot efficiently capture the mutual exclusivity constraints associated with permutations. In this paper, we use the "low-frequency" terms of a Fourier decomposition to represent such distributions compactly.
Neural Information Processing Systems
Dec-31-2008
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