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Identifying Psychological Theme Words from Emotion Annotated Interviews

机译:从情感注释访谈中识别心理主题词

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Recent achievements in Natural Language Processing (NLP) and Psychology invoke the challenges to identify the insight of emotions. In the present study, we have identified different psychology related theme words while analyzing emotions on the interview data of ISEAR (International Survey of Emotion Antecedents and Reactions) research group. Primarily, we have developed a Graphical User Interface (GUI) to generate visual graphs for analyzing the impact of emotions with respect to different background, behavioral and physiological variables available in the ISEAR dataset. We have discussed some of the interesting results as observed from the generated visual graphs. On the other hand, different text clusters are identified from the interview statements by selecting individual as well as different combinations of the variables. Such textual clusters are used not only for retrieving the psychological theme words but also to classify the theme words into their respective emotion classes. In order to retrieve the psychological theme words from the text clusters, we have developed a rule based baseline system considering unigram based keyword spotting technique. The system has been evaluated based on a Top-n ranking strategy (where n=10, 20 or 30 most frequent theme words). Overall, the system achieves the average F-Scores of .42, .32, .36, .42, .35, .40 and .40 in identifying theme words with respect to Joy, Anger, Disgust, Fear, Guilt, Sadness and Shame emotion classes, respectively.
机译:最近的自然语言处理成就(NLP)和心理学援引挑战以确定情绪的洞察力。在本研究中,我们发现了不同的心理学相关主题词,同时分析了对Isear(情绪前一种和反应的国际调查)研究小组的面试数据的情绪。主要是,我们开发了一个图形用户界面(GUI),以生成可视图,以分析情绪对ISEAR数据集可用的不同背景,行为和生理变量的影响。我们已经讨论了从生成的视觉图表中观察到的一些有趣的结果。另一方面,通过选择个体以及变量的不同组合来从面试语句中识别不同的文本集群。这种文本集群不仅用于检索心理主题词,还用于将主题词语分类为各自的情感课程。为了从文本集群中检索心理主题单词,我们开发了考虑Unigram基于关键字发现技术的基于规则的基线系统。已经基于Top-N个排名策略(其中n = 10,20或30个最常见的主题词)进行评估。总的来说,该系统实现了.42,.32,.36,.42,.35,.40和.40在识别关于快乐,愤怒,厌恶,恐惧,内疚,悲伤和悲伤和悲伤和分别羞辱情感课程。

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