Learning word embeddings from dependency relations

Yinggong Zhao, Shujian Huang, Xinyu Dai, Jianbing Zhang, Jiajun Chen
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引用次数: 13

Abstract

Continuous-space word representation has demonstrated its effectiveness in many natural language pro-cessing(NLP) tasks. The basic idea for embedding training is to update embedding matrix based on its context. However, such context has been constrained on fixed surrounding words, which we believe are not sufficient to represent the actual relations for given center word. In this work we extend previous approach by learning distributed representations from dependency structure of a sentence which can capture long distance relations. Such context can learn better semantics for words, which is proved on Semantic-Syntactic Word Relationship task. Besides, competitive result is also achieved for dependency embeddings on WordSim-353 task.
从依赖关系中学习词嵌入
连续空间词表示在许多自然语言处理(NLP)任务中已经证明了它的有效性。嵌入训练的基本思想是基于上下文更新嵌入矩阵。然而,这种语境被限制在固定的周围词上,我们认为这些词不足以代表给定中心词的实际关系。在这项工作中,我们扩展了以前的方法,从可以捕获长距离关系的句子的依赖结构中学习分布式表示。这在语义-句法词关系任务中得到了验证。此外,在WordSim-353任务上的依赖项嵌入也取得了竞争结果。
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