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Reproducing affective norms with lexical co-occurrence statistics: Predicting valence, arousal, and dominance

机译:使用词汇共现统计重现情感规范:预测效价,唤醒和优势

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摘要

Human ratings of valence, arousal, and dominance are frequently used to study the cognitive mechanisms of emotional attention, word recognition, and numerous other phenomena in which emotions are hypothesized to play an important role. Collecting such norms from human raters is expensive and time consuming. As a result, affective norms are available for only a small number of English words, are not available for proper nouns in English, and are sparse in other languages. This paper investigated whether affective ratings can be predicted from length, contextual diversity, co-occurrences with words of known valence, and orthographic similarity to words of known valence, providing an algorithm for estimating affective ratings for larger and different datasets. Our bootstrapped ratings achieved correlations with human ratings on valence, arousal, and dominance that are on par with previously reported correlations across gender, age, education and language boundaries. We release these bootstrapped norms for 23,495 English words.
机译:人体对价,唤醒和主导地位的评价经常用于研究情绪注意力,单词识别和许多其他假设情绪起重要作用的现象的认知机制。从人类评估者那里收集这样的规范既昂贵又费时。结果,情感规范仅适用于少量的英语单词,不适用于英语中的专有名词,而稀疏于其他语言。本文研究了是否可以从长度,语境多样性,已知价词的共现以及与已知价词的正字法相似性上预测情感等级,为估计较大和不同数据集的情感等级提供了一种算法。我们的引导式评分与人的效价,唤醒和主导地位评分之间的相关性与以前报告的跨性别,年龄,学历和语言边界的相关性相当。我们针对23,495个英语单词发布了这些自举规范。

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