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A Conditional Random Field for Discriminatively-trained Finite-state String Edit Distance

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arxiv 1207.1406 v1 pith:Y6VYTDKP submitted 2012-07-04 cs.LG cs.AI

A Conditional Random Field for Discriminatively-trained Finite-state String Edit Distance

classification cs.LG cs.AI
keywords conditionaldataeditgenerativerandomstringfieldmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The need to measure sequence similarity arises in information extraction, object identity, data mining, biological sequence analysis, and other domains. This paper presents discriminative string-edit CRFs, a finitestate conditional random field model for edit sequences between strings. Conditional random fields have advantages over generative approaches to this problem, such as pair HMMs or the work of Ristad and Yianilos, because as conditionally-trained methods, they enable the use of complex, arbitrary actions and features of the input strings. As in generative models, the training data does not have to specify the edit sequences between the given string pairs. Unlike generative models, however, our model is trained on both positive and negative instances of string pairs. We present positive experimental results on several data sets.

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