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In sequence modeling, we often wish to represent complex interaction between labels, such as when performing multiple, cascaded labeling tasks on the same sequence, or when long-range dependencies exist. We present dynamic conditional random fields (DCRFs), a generalization of linear-chain conditional random fields (CRFs) in which each time slice contains a set of state variables and edges---a distributed state representation as in dynamic Bayesian networks (DBNs)---and parameters are tied across slices. Since exact inference can be intractable in such models, we perform approximate inference using several schedules for belief propagation, including tree-based reparameterization (TRP). On a natural-language chunking task, we show that a DCRF performs better than a series of linear-chain CRFs, achieving comparable performance using only half the training data.
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Charles Sutton
Khashayar Rohanimanesh
Andrew McCallum
University of Massachusetts Amherst
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Sutton et al. (Thu,) studied this question.
www.synapsesocial.com/papers/6a07131f176052a461d3b7c6 — DOI: https://doi.org/10.1145/1015330.1015422