Uncovering the Riffled Independence Structure of Rankings
Jonathan Huang, Carlos Guestrin

TL;DR
This paper introduces riffled independence, a new probabilistic structure for modeling permutations that allows for more expressive ranking distributions and efficient inference, demonstrated through algorithms and real data applications.
Contribution
It formalizes riffled independence as a novel independence structure for permutations, enabling scalable modeling and learning of ranking data.
Findings
Riffled independence generalizes full independence for rankings.
Algorithms for inference and structure discovery are developed.
Application to real datasets reveals meaningful latent structures.
Abstract
Representing distributions over permutations can be a daunting task due to the fact that the number of permutations of objects scales factorially in . One recent way that has been used to reduce storage complexity has been to exploit probabilistic independence, but as we argue, full independence assumptions impose strong sparsity constraints on distributions and are unsuitable for modeling rankings. We identify a novel class of independence structures, called \emph{riffled independence}, encompassing a more expressive family of distributions while retaining many of the properties necessary for performing efficient inference and reducing sample complexity. In riffled independence, one draws two permutations independently, then performs the \emph{riffle shuffle}, common in card games, to combine the two permutations to form a single permutation. Within the context of ranking,…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Game Theory and Voting Systems · Data Management and Algorithms
