Empirical Evaluation of Character-Based Model on Neural Named-Entity Recognition in Indonesian Conversational Texts

NUT@EMNLP Pub Date : 2018-05-01 DOI:10.18653/v1/W18-6112
Kemal Kurniawan, Samuel Louvan
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引用次数: 7

Abstract

Despite the long history of named-entity recognition (NER) task in the natural language processing community, previous work rarely studied the task on conversational texts. Such texts are challenging because they contain a lot of word variations which increase the number of out-of-vocabulary (OOV) words. The high number of OOV words poses a difficulty for word-based neural models. Meanwhile, there is plenty of evidence to the effectiveness of character-based neural models in mitigating this OOV problem. We report an empirical evaluation of neural sequence labeling models with character embedding to tackle NER task in Indonesian conversational texts. Our experiments show that (1) character models outperform word embedding-only models by up to 4 F1 points, (2) character models perform better in OOV cases with an improvement of as high as 15 F1 points, and (3) character models are robust against a very high OOV rate.
印尼语会话文本中基于字符的神经命名实体识别模型的实证评价
尽管命名实体识别(NER)任务在自然语言处理领域有着悠久的历史,但以往的工作很少对会话文本任务进行研究。这样的文本具有挑战性,因为它们包含大量的单词变体,这增加了词汇外(OOV)单词的数量。大量的OOV词给基于词的神经模型带来了困难。同时,有大量的证据表明基于特征的神经模型在缓解这种面向对象问题方面是有效的。我们报告了一个具有字符嵌入的神经序列标记模型的经验评估,以解决印度尼西亚会话文本中的NER任务。我们的实验表明:(1)字符模型比仅词嵌入模型的性能高出4个F1点,(2)字符模型在OOV情况下表现更好,提高了15个F1点,(3)字符模型对非常高的OOV率具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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