articleJan 1, 2005GOLD OA
Incorporating non-local information into information extraction systems by Gibbs sampling
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Abstract
Most current statistical natural language processing models use only local features so as to permit dynamic programming in inference, but this makes them unable to fully account for the long distance structure that is prevalent in language use. We show how to solve this dilemma with Gibbs sampling, a simple Monte Carlo method used to perform approximate inference in factored probabilistic models. By using simulated annealing in place of Viterbi decoding in sequence models such as HMMs, CMMs, and CRFs, it is possible to incorporate non-local structure while preserving tractable inference. We use this technique to augment an existing CRF-based information extraction system with long-distance dependency models,…
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3Topics & keywords
Topics
Keywords
- Computer science
- Gibbs sampling
- Information extraction
- Viterbi algorithm
- Artificial intelligence
- Approximate inference
- Inference
- Probabilistic logic
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