论文标题

“ Splink”是快乐的,“ Phrouth”很恐怖:无意识的单词的情感强度分析

"splink" is happy and "phrouth" is scary: Emotion Intensity Analysis for Nonsense Words

论文作者

Sabbatino, Valentino, Troiano, Enrica, Schweitzer, Antje, Klinger, Roman

论文摘要

人们将情感含义与言语联系在一起 - “死亡”是可怕而悲伤的,而“党派”充满了惊喜和喜悦。这就提出了一个问题,如果关联纯粹是语义含义固有的学习性情感进口的产物,或者也是单词其他特征(例如形态学和语音模式)的效果。我们通过基于注释的分析来解决这个问题,利用胡说八道的词。具体而言,我们进行了一项最佳缩小的众包研究,参与者为272个无意义的单词和将结果与以前的工作进行比较,为68个真实的单词,参与者为喜悦,悲伤,愤怒,厌恶,恐惧和惊讶分配强度分数。基于此资源,我们开发了基于角色级别和基于语音的强度回归体。我们在六个情感类别中以胡说八道的单词和真实的单词(利用7493个单词的NRC情感强度词典)进行评估。对我们数据的分析表明,某些语音模式在情绪强度之间显示出明显的差异。例如,作为第一个音素,s有助于喜悦,让s感到惊讶,p是最后的音素,而不是愤怒和恐惧。在建模实验中,与旨在纯粹是从废话单词学习情绪内涵的回归变量相比,对NRC情感强度词汇进行真实词的回归剂显示出更高的性能(r = 0.17)。我们得出的结论是,人类确实将情感含义与基于表面模式的单词相关联,但也基于与现有单词的相似之处(“ juy”到“ joy”或“ flike”,“ flike”与“喜欢”)。

People associate affective meanings to words - "death" is scary and sad while "party" is connotated with surprise and joy. This raises the question if the association is purely a product of the learned affective imports inherent to semantic meanings, or is also an effect of other features of words, e.g., morphological and phonological patterns. We approach this question with an annotation-based analysis leveraging nonsense words. Specifically, we conduct a best-worst scaling crowdsourcing study in which participants assign intensity scores for joy, sadness, anger, disgust, fear, and surprise to 272 non-sense words and, for comparison of the results to previous work, to 68 real words. Based on this resource, we develop character-level and phonology-based intensity regressors. We evaluate them on both nonsense words and real words (making use of the NRC emotion intensity lexicon of 7493 words), across six emotion categories. The analysis of our data reveals that some phonetic patterns show clear differences between emotion intensities. For instance, s as a first phoneme contributes to joy, sh to surprise, p as last phoneme more to disgust than to anger and fear. In the modelling experiments, a regressor trained on real words from the NRC emotion intensity lexicon shows a higher performance (r = 0.17) than regressors that aim at learning the emotion connotation purely from nonsense words. We conclude that humans do associate affective meaning to words based on surface patterns, but also based on similarities to existing words ("juy" to "joy", or "flike" to "like").

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