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Affect Detection from Social Contexts Using Commonsense Knowledge Representations

机译:使用常识知识表示从社会上下文中进行情感检测

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摘要

In the past years, an important volume of research in Natural Language Processing has concentrated on the development of automatic systems to deal with affect in text. In spite of this interest, the performance of the approaches is still very low. An explanation to this fact is that emotion is most of the times not expressed through specific words, but by evoking situations that have an affective meaning. Dealing with this phenomenon requires automatic systems to have "knowledge"on the situation, the concepts it describes and their interaction. This necessity motivated us to develop the EmotiNet knowledgebase -- a resource for the detection of emotion from text based on commonsense knowledge on concepts, their interaction and their affective consequence. In this article, we present an overview of the process undergone to build EmotiNet, propose methods to extend the knowledge it contains and analyze the performance of implicit affect detection using this resource. Additionally, we compare the results obtained with EmotiNet to the use of well-established methods for affect detection. The results of our extensive evaluations show that the approach using EmotiNet is appropriate for capturing and storing the structure of implicitly expressed affect, that the knowledge it contains can be easily extended to improve the results of this task and that methods employing EmotiNet obtain better results than existing methods for emotion detection.
机译:在过去的几年中,自然语言处理方面的重要研究集中在自动处理文本影响方面。尽管有这种兴趣,但是这些方法的性能仍然非常低。对此事实的一种解释是,情感在大多数情况下不是通过特定的词语来表达,而是通过唤起具有情感含义的情况来表达。处理这种现象需要自动系统对情况,它所描述的概念及其相互作用具有“知识”。这种必要性促使我们开发EmotiNet知识库-一种基于概念的常识性知识,它们之间的相互作用及其情感结果而从文本中检测情感的资源。在本文中,我们概述了构建EmotiNet所经历的过程,提出了一些方法来扩展其中包含的知识,并使用此资源来分析隐式影响检测的性能。此外,我们将通过EmotiNet获得的结果与使用完善的方法进行影响检测进行了比较。我们广泛评估的结果表明,使用EmotiNet的方法适用于捕获和存储隐含表达的情感的结构,可以轻松扩展其中包含的知识以改进此任务的结果,并且使用EmotiNet的方法获得的效果优于现有的情绪检测方法。

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