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Extending the EmotiNet Knowledge Base to Improve the Automatic Detection of Implicitly Expressed Emotions from Text

机译:扩展EmotiNet知识库,以改进对文本中隐含表达情绪的自动检测

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Sentiment analysis is one of the recent, highly dynamic fields in Natural Language Processing. Although much research has been performed in this area, most existing approaches are based on word-level analysis of texts and are mostly able to detect only explicit expressions of sentiment. However, in many cases, emotions are not expressed by using words with an affective meaning (e.g. happy), but by describing real-life situations, which readers (based on their commonsense knowledge) detect as being related to a specific emotion. Given the challenges of detecting emotions from contexts in which no lexical clue is present, in this article we present a comparative analysis between the performance of well-established methods for emotion detection (supervised and lexical knowledge-based) and a method we extend, which is based on commonsense knowledge stored in the EmotiNet knowledge base. Our extensive comparative evaluations show that, in the context of this task, the approach based on EmotiNet is the most appropriate.
机译:情感分析是自然语言处理中近来高度动态的领域之一。尽管在该领域已进行了大量研究,但是大多数现有方法都是基于文本的单词级分析,并且大多数方法只能检测情感的显式表达。然而,在许多情况下,情感不是通过使用具有情感含义(例如,快乐)的单词来表达的,而是通过描述现实生活中的情况来表达的,读者(基于他们的常识)会将其检测为与特定情感相关。鉴于从没有词汇线索的情境中检测情感的挑战,在本文中,我们将对成熟的情感检测方法(基于监督和基于词汇知识的方法)与我们扩展的方法的性能进行比较分析。基于存储在EmotiNet知识库中的常识知识。我们广泛的比较评估表明,在此任务的背景下,基于EmotiNet的方法是最合适的。

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