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Learning Emotion-enriched Word Representations

机译:学习情感丰富的单词表示

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Most word representation learning methods are based on the distributional hypothesis in linguistics, according to which words that are used and occur in the same contexts tend to possess similar meanings. As a consequence, emotionally dissimilar words, such as "happy" and "sad" occurring in similar contexts would purport more similar meaning than emotionally similar words, such as "happy" and "joy". This complication leads to rather undesirable outcome in predictive tasks that relate to affect (emotional state), such as emotion classification and emotion similarity. In order to address this limitation, we propose a novel method of obtaining emotion-enriched word representations, which projects emotionally similar words into neighboring spaces and emotionally dissimilar ones far apart. The proposed approach leverages distant supervision to automatically obtain a large training dataset of text documents and two recurrent neural network architectures for learning the emotion-enriched representations. Through extensive evaluation on two tasks, including emotion classification and emotion similarity, we demonstrate that the proposed representations outperform several competitive general-purpose and affective word representations.
机译:大多数单词表示学习方法都是基于语言学中的分布假设,根据这种假设,在相同上下文中使用和出现的单词往往具有相似的含义。结果,在情感上相异的单词,例如在相似的上下文中出现的“快乐”和“悲伤”,将比在情感上相似的单词,例如“快乐”和“欢乐”,具有更多相似的含义。这种并发症导致与情感(情绪状态)相关的预测任务的不良结果,例如情感分类和情感相似性。为了解决这一局限性,我们提出了一种获取情感丰富的单词表示的新颖方法,该方法将情感相似的单词投射到相邻的空间中,而情感相似的单词投射到相距遥远的位置。所提出的方法利用远程监督来自动获取大量的文本文档训练数据集和两种递归神经网络体系结构,以学习丰富的情感表示。通过对包括情感分类和情感相似性两个任务的广泛评估,我们证明了所提出的表示优于几种竞争性的通用和情感词表示。

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