Emotion Mining Using Semantic Similarity

Rafiya Jan, Afaq Alam Khan
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引用次数: 8

Abstract

Social networks are considered as the most abundant sources of affective information for sentiment and emotion classification. Emotion classification is the challenging task of classifying emotions into different types. Emotions being universal, the automatic exploration of emotion is considered as a difficult task to perform. A lot of the research is being conducted in the field of automatic emotion detection in textual data streams. However, very little attention is paid towards capturing semantic features of the text. In this article, the authors present the technique of semantic relatedness for automatic classification of emotion in the text using distributional semantic models. This approach uses semantic similarity for measuring the coherence between the two emotionally related entities. Before classification, data is pre-processed to remove the irrelevant fields and inconsistencies and to improve the performance. The proposed approach achieved the accuracy of 71.795%, which is competitive considering as no training or annotation of data is done.
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基于语义相似度的情感挖掘
社交网络被认为是情感和情感分类最丰富的情感信息来源。情绪分类是一项具有挑战性的任务,它将情绪分为不同的类型。情绪是普遍的,对情绪的自动探索被认为是一项困难的任务。在文本数据流中的自动情感检测领域进行了大量的研究。然而,很少有人注意捕捉文本的语义特征。在本文中,作者提出了一种基于语义关联的分布式语义模型的文本情感自动分类技术。该方法使用语义相似度来衡量两个情感相关实体之间的一致性。在分类之前,对数据进行预处理,去除不相关字段和不一致字段,提高性能。该方法的准确率为71.795%,考虑到没有对数据进行训练和标注,具有一定的竞争力。
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