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arxiv: 1401.3488 · v1 · pith:LJC6PD5Enew · submitted 2014-01-15 · 💻 cs.IR · cs.CL· cs.LG

Content Modeling Using Latent Permutations

classification 💻 cs.IR cs.CLcs.LG
keywords modeldocumenttopicdiscourse-levellatentorderingpermutationsacross
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We present a novel Bayesian topic model for learning discourse-level document structure. Our model leverages insights from discourse theory to constrain latent topic assignments in a way that reflects the underlying organization of document topics. We propose a global model in which both topic selection and ordering are biased to be similar across a collection of related documents. We show that this space of orderings can be effectively represented using a distribution over permutations called the Generalized Mallows Model. We apply our method to three complementary discourse-level tasks: cross-document alignment, document segmentation, and information ordering. Our experiments show that incorporating our permutation-based model in these applications yields substantial improvements in performance over previously proposed methods.

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