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Similarity Based Auxiliary Classifier for Named Entity Recognition
{Wenge Rong Zhang Xiong Yuanxin Ouyang Jianxin Yang Shiyuan Xiao}

Abstract
The segmentation problem is one of the fundamental challenges associated with name entity recognition (NER) tasks that aim to reduce the boundary error when detecting a sequence of entity words. A considerable number of advanced approaches have been proposed and most of them exhibit performance deterioration when entities become longer. Inspired by previous work in which a multi-task strategy is used to solve segmentation problems, we design a similarity based auxiliary classifier (SAC), which can distinguish entity words from non-entity words. Unlike conventional classifiers, SAC uses vectors to indicate tags. Therefore, SAC can calculate the similarities between words and tags, and then compute a weighted sum of the tag vectors, which can be considered a useful feature for NER tasks. Empirical results are used to verify the rationality of the SAC structure and demonstrate the SAC model{'}s potential in performance improvement against our baseline approaches.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| named-entity-recognition-on-wnut-2017 | NeuralCRF+SAC | F1: 44.77 |
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