Natural Language Processing for Cognitive Analysis of Emotions
- URL: http://arxiv.org/abs/2210.05296v1
- Date: Tue, 11 Oct 2022 09:47:00 GMT
- Title: Natural Language Processing for Cognitive Analysis of Emotions
- Authors: Gustave Cortal (LMF, ENS Paris Saclay), Alain Finkel (LMF, ENS Paris
Saclay, IUF), Patrick Paroubek (LISN), Lina Ye (LMF)
- Abstract summary: We introduce a new annotation scheme for exploring emotions and their causes, along with a new French dataset composed of autobiographical accounts of an emotional scene.
The texts were collected by applying the Cognitive Analysis of Emotions developed by A. Finkel to help people improve on their emotion management.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Emotion analysis in texts suffers from two major limitations: annotated
gold-standard corpora are mostly small and homogeneous, and emotion
identification is often simplified as a sentence-level classification problem.
To address these issues, we introduce a new annotation scheme for exploring
emotions and their causes, along with a new French dataset composed of
autobiographical accounts of an emotional scene. The texts were collected by
applying the Cognitive Analysis of Emotions developed by A. Finkel to help
people improve on their emotion management. The method requires the manual
analysis of an emotional event by a coach trained in Cognitive Analysis. We
present a rule-based approach to automatically annotate emotions and their
semantic roles (e.g. emotion causes) to facilitate the identification of
relevant aspects by the coach. We investigate future directions for emotion
analysis using graph structures.
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