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Supervised Complementary Entity Recognition with Augmented Key-value Pairs of Knowledge

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arxiv 1705.10030 v1 pith:QWBNXEWT submitted 2017-05-29 cs.CL

Supervised Complementary Entity Recognition with Augmented Key-value Pairs of Knowledge

classification cs.CL
keywords complementaryknowledge-basedsupervisedentityfeaturesimportantkcrfkey-value
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Extracting opinion targets is an important task in sentiment analysis on product reviews and complementary entities (products) are one important type of opinion targets that may work together with the reviewed product. In this paper, we address the problem of Complementary Entity Recognition (CER) as a supervised sequence labeling with the capability of expanding domain knowledge as key-value pairs from unlabeled reviews, by automatically learning and enhancing knowledge-based features. We use Conditional Random Field (CRF) as the base learner and augment CRF with knowledge-based features (called the Knowledge-based CRF or KCRF for short). We conduct experiments to show that KCRF effectively improves the performance of supervised CER task.

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