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情绪事件与肇因的语言分析 (A Linguistic Analysis of Emotion and Cause)

Lee, Y. M., & Huang, C-R. (2018). 情绪事件与肇因的语言分析. 当代语言学 (Contemporary linguistics), 20(3).

 

Abstract

Previous research on emotion analysis often neglects the interactions between emotions and events, regardless of the integral role event plays in emotion studies. In this paper, emotion construction is deemed to be composed of three sequentially structured subevents, namely cause event( i. e. emotion triggering event), emotion state, and elicited event( i. e. event that is induced by the emotion). We blend the insights from emotion studies in the fields of linguistics, computer science, psychology, etc. and investigate the interactions between emotions and cause events on that basis.In general, 71% of the instances in the emotion-sentence corpus express emotions,with sentences expressing happiness accounting for the most, and sadness the least. For each emotion type, approximately 81% of the instances, on average, contain a cause event. It indicates that an emotion frequently co-occurred with its cause event in text. Moreover, it is suggested that cause events tend to be expressed by means of verbal events, and they often occur at the position to the left of the emotion keyword. Therefore, an in-depth analysis of cause event will have great implications for emotion processing in text.Following Chang et al.’s( 2000) dichotomical classification of emotion verbs, emotion verbs are classified into change-of-state emotion verbs and homogeneous state emotion verbs. We investigate the interrelations between emotions and cause events in terms of transitivity and epistemicity. As for the degree of transitivity of cause events, we examine the affectedness of experiencers of the emotions by focusing on three parameters, namely agentivity, kinesis, and participation. The analysis establishes the relationship between emotion types and cause events. The change-of-state and homogeneous emotion verbs share certain cause event features, except for the fear emotion. The cause events of happiness have the highest degree of transitivity, whereas the cause events of sadness have the lowest. The cause events of anger and surprise share similar features. Unlike other emotions, the cause event features of fear are different for change-of-state and homogenous emotion verbs in terms of the kinesis of events, i.e. motion.As for epistemicity, we introduce epistemic markers which are verbs that indicate the experiencer’s cognitive awareness of the emotion causes. While cause events of homogeneous emotion verbs are rarely found to be introduced by epistemic markers, cause events of change-of-state emotion verbs are often preceded by epistemic markers. It is observed that the cause events of a positive emotion such as happiness tend to be more frequently marked by epistemic markers than that of a negative emotion, such as sadness or anger. It can be explained by the motivation of the experiencer. That is, the higher motivation the experiencer has to express the certainty of the cause events, the more explicit epistemic marking of cause events is allowed.This paper considers an emotion as a pivot event that links the cause events and the elicited events, and presents the interactions between emotions and cause events using a corpus-based approach. The annotated corpus will provide useful and valuable resources for linguistic analysis as well as natural language processing. Besides, the linguistic account of the emotion-cause interactions will not only contribute to the construction of linguistic model of emotions, but also lay the groundwork for the computational implementations for automatic emotion detection and classification.

 

FH_23Link to publication in CNKI


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