首页> 外文期刊>The quarterly journal of experimental psychology: QJEP >Avoid violence, rioting, and outrage; approach celebration, delight, and strength: Using large text corpora to compute valence, arousal, and the basic emotions
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Avoid violence, rioting, and outrage; approach celebration, delight, and strength: Using large text corpora to compute valence, arousal, and the basic emotions

机译:避免暴力,暴动和暴行;庆祝,愉悦和力量的方法:使用大型文本语料库来计算价,唤醒和基本情绪

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摘要

Ever since Aristotle discussed the issue in Book II of his Rhetoric, humans have attempted to identify a set of "basic emotion labels". In this paper we propose an algorithmic method for evaluating sets of basic emotion labels that relies upon computed co-occurrence distances between words in a 12.7-billion-word corpus of unselected text from USENET discussion groups. Our method uses the relationship between human arousal and valence ratings collected for a large list of words, and the co-occurrence similarity between each word and emotion labels. We assess how well the words in each of 12 emotion label sets-proposed by various researchers over the past 118 years-predict the arousal and valence ratings on a test and validation dataset, each consisting of over 5970 items. We also assess how well these emotion labels predict lexical decision residuals (LDRTs), after co-varying out the effects attributable to basic lexical predictors. We then demonstrate a generalization of our method to determine the most predictive "basic" emotion labels from among all of the putative models of basic emotion that we considered. As well as contributing empirical data towards the development of a more rigorous definition of basic emotions, our method makes it possible to derive principled computational estimates of emotionality-specifically, of arousal and valence-for all words in the language.
机译:自从亚里斯多德(Aristotle)在其《修辞学》第二卷中讨论了这一问题以来,人们一直在尝试找出一组“基本情感标签”。在本文中,我们提出了一种用于评估基本情感标签集的算法方法,该方法依赖于来自USENET讨论组的未选中文本的127亿个单词的语料库中单词之间的计算共现距离。我们的方法使用了为大量单词收集的人类唤醒和效价等级之间的关系,以及每个单词和情感标签之间的共现相似性。我们评估了过去118年中由不同研究人员提出的12种情感标签集中每个单词的效果如何,预测了在包含5970项内容的测试和验证数据集上的唤醒和效价等级。在共同归因于基本词汇预测变量的影响之后,我们还评估了这些情感标签对词汇决策残差(LDRT)的预测程度。然后,我们演示了从我们考虑的所有基本情感推定模型中确定最具预测性的“基本”情感标签的方法的概括。除了为发展更严格的基本情绪定义提供经验数据外,我们的方法还可以为语言中的所有单词推导特定的情绪情感,唤醒和价态的有原则的计算估计。

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