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首页> 外文期刊>The Electronic Library >Improving the affective analysis in texts: Automatic method to detect affective intensity in lexicons based on Plutchik's wheel of emotions
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Improving the affective analysis in texts: Automatic method to detect affective intensity in lexicons based on Plutchik's wheel of emotions

机译:改进文本中的情感分析:基于Plutchik情绪轮的自动检测词典情感强度的方法

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Purpose This paper aims to propose a method for automatically labelling an affective lexicon with intensity values by using the WordNet Similarity (WS) software package with the purpose of improving the results of an affective analysis process, which is relevant to interpreting the textual information that is available in social networks. The hypothesis states that it is possible to improve affective analysis by using a lexicon that is enriched with the intensity values obtained from similarity metrics. Encouraging results were obtained when an affective analysis based on a labelled lexicon was compared with that based on another lexicon without intensity values. Design/methodology/approach The authors propose a method for the automatic extraction of the affective intensity values of words using the similarity metrics implemented in WS. First, the intensity values were calculated for words having an affective root in WordNet. Then, to evaluate the effectiveness of the proposal, the results of the affective analysis based on a labelled lexicon were compared to the results of an analysis with and without affective intensity values. Findings The main contribution of this research is a method for the automatic extraction of the intensity values of affective words used to enrich a lexicon compared with the manual labelling process. The results obtained from the affective analysis with the new lexicon are encouraging, as they provide a better performance than those achieved using a lexicon without affective intensity values. Research limitations/implications - Given the restrictions for calculating the similarity between two words, the lexicon labelled with intensity values is a subset of the original lexicon, which means that a large proportion of the words in the corpus are not labelled in the new lexicon. Practical implications - The practical implications of this work include providing tools to improve the analysis of the feelings of the users of social networks. In particular, it is of interest to provide an affective lexicon that improves attempts to solve the problems of a digital society, such as the detection of cyberbullying. In this case, by achieving greater precision in the detection of emotions, it is possible to detect the roles of participants in a situation of cyberbullying, for example, the bully and victim. Other problems in which the application of affective lexicons is of importance are the detection of aggressiveness against women or gender violence or the detection of depressive states in young people and children. Social implications - This work is interested in providing an affective lexicon that improves attempts to solve the problems of a digital society, such as the detection of cyberbullying. In this case, by achieving greater precision in the detection of emotions, it is possible to detect the roles of participants in a situation of cyber bullying, for example, the bully and victim. Other problems in which the application of affective lexicons is of importance are the detection of aggressiveness against women or gender violence or the detection of depressive states in young people and children. Originality/value The originality of the research lies in the proposed method for automatically labelling the words of an affective lexicon with intensity values by using WS. To date, a lexicon labelled with intensity values has been constructed using the opinions of experts, but that method is more expensive and requires more time than other existing methods.On the other hand, the new method developed herein is applicable to larger lexicons, requires less time and facilitates automatic updating.
机译:目的本文旨在提出一种使用WordNet相似度(WS)软件包自动为强度值标记情感词典的方法,目的是改善情感分析过程的结果,这与解释文本信息有关。在社交网络中可用。该假设指出,可以通过使用丰富了从相似性度量获得的强度值的词典来改善情感分析。将基于标记词典的情感分析与基于其他没有强度值的词典的情感分析进行比较时,可获得令人鼓舞的结果。设计/方法/方法作者提出了一种使用WS中实现的相似性度量自动提取单词情感强度值的方法。首先,针对WordNet中具有情感词根的单词计算强度值。然后,为了评估建议的有效性,将基于标记词典的情感分析结果与带有或不带有情感强度值的分析结果进行了比较。研究结果该研究的主要贡献是与人工标记过程相比,一种自动提取用于丰富词典的情感词强度值的方法。使用新词典进行情感分析所获得的结果令人鼓舞,因为与不使用情感强度值的词典相比,它们提供了更好的性能。研究的局限性/意义-鉴于计算两个单词之间相似度的限制,用强度值标记的词典是原始词典的子集,这意味着语料库中的大部分单词未在新词典中标记。实际意义-这项工作的实际意义包括提供工具,以改善对社交网络用户感受的分析。特别地,令人感兴趣的是提供一种情感词典,其改善了解决数字社会问题的尝试,例如对网络欺凌的检测。在这种情况下,通过在情感检测中获得更高的精度,可以检测参与者在网络欺凌情况下的角色,例如欺凌者和受害者。应用情感词典的其他重要问题是检测对妇女的侵略性或性别暴力或检测青少年和儿童的抑郁状态。社会意义-这项工作有兴趣提供一个情感词典,以改善尝试解决数字社会问题(如检测网络欺凌)的尝试。在这种情况下,通过在情感检测中获得更高的精度,可以检测参与者在网络欺凌情况下的角色,例如,欺凌者和受害者。应用情感词典的其他重要问题是检测对妇女的侵略性或性别暴力或检测青少年和儿童的抑郁状态。独创性/价值研究的独创性在于所提出的使用WS使用强度值自动标记情感词典单词的方法。迄今为止,已经使用专家的意见构建了带有强度值标记的词典,但是该方法比其他现有方法更昂贵且需要更多时间。另一方面,本文开发的新方法适用于较大的词典,需要更少的时间并有助于自动更新。

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