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Lifelong Learning CRF for Supervised Aspect Extraction

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arxiv 1705.00251 v1 pith:C5JKU47V submitted 2017-04-29 cs.CL

Lifelong Learning CRF for Supervised Aspect Extraction

classification cs.CL
keywords extractionaspectknowledgelearninglifelongsupervisedapplicationsbetter
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper makes a focused contribution to supervised aspect extraction. It shows that if the system has performed aspect extraction from many past domains and retained their results as knowledge, Conditional Random Fields (CRF) can leverage this knowledge in a lifelong learning manner to extract in a new domain markedly better than the traditional CRF without using this prior knowledge. The key innovation is that even after CRF training, the model can still improve its extraction with experiences in its applications.

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