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Identifying Motion Entities in Natural Language and A Case Study for Named Entity Recognition

机译:识别自然语言中的运动实体以及命名实体识别的案例研究

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Motion recognition is one of the basic cognitive capabilities of many life forms, however, detecting and understanding motion in text is not a trivial task. In addition, identifying motion entities in natural language is not only challenging but also beneficial for a better natural language understanding. In this paper, we present a Motion Entity Tagging (MET) model to identify entities in motion in a text using the Literal-Motion-in-Text (LiMiT) dataset for training and evaluating the model. Then we propose a new method to split clauses and phrases from complex and long motion sentences to improve the performance of our MET model. We also present results showing that motion features, in particular, entity in motion benefits the Named-Entity Recognition (NER) task. Finally, we present an analysis for the special co-occurrence relation between the person category in NER and animate entities in motion, which significantly improves the classification performance for the person category in NER.
机译:运动识别是许多生命形式的基本认知能力之一,然而,在文本中检测和理解运动不是一个微不足道的任务。此外,识别自然语言中的运动实体不仅具有挑战性,而且有利于更好的自然语言理解。在本文中,我们介绍了一个运动实体标记(MET)模型,用于使用文字动作(限制)数据集进行文本中的文本中的运动中的实体进行培训和评估模型。然后,我们提出了一种新的方法来拆分来自复杂和长主动句的条款和短语,以提高我们的符号模型的性能。我们还存在显示该运动特征,特别是运动中的实体的结果有益于命名实体识别(ner)任务。最后,我们对行动中的人类类别与动作的动画实体之间的特殊共同发生关系进行了分析,这显着提高了人类人物的分类性能。

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