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arxiv 2203.08985 v1 pith:GOTQFWRD submitted 2022-03-16 cs.CL

Label Semantics for Few Shot Named Entity Recognition

classification cs.CL
keywords labelmodelnamedshotbenchmarkscomputedencodeencoder
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We study the problem of few shot learning for named entity recognition. Specifically, we leverage the semantic information in the names of the labels as a way of giving the model additional signal and enriched priors. We propose a neural architecture that consists of two BERT encoders, one to encode the document and its tokens and another one to encode each of the labels in natural language format. Our model learns to match the representations of named entities computed by the first encoder with label representations computed by the second encoder. The label semantics signal is shown to support improved state-of-the-art results in multiple few shot NER benchmarks and on-par performance in standard benchmarks. Our model is especially effective in low resource settings.

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