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EERPD: Leveraging Emotion and Emotion Regulation for Improving Personality Detection

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arxiv 2406.16079 v1 pith:DX6TXHGE submitted 2024-06-23 cs.CL cs.AI

EERPD: Leveraging Emotion and Emotion Regulation for Improving Personality Detection

classification cs.CL cs.AI
keywords personalitydetectionemotioneerpdregulationtextenhancesmethod
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Personality is a fundamental construct in psychology, reflecting an individual's behavior, thinking, and emotional patterns. Previous researches have made some progress in personality detection, primarily by utilizing the whole text to predict personality. However, these studies generally tend to overlook psychological knowledge: they rarely apply the well-established correlations between emotion regulation and personality. Based on this, we propose a new personality detection method called EERPD. This method introduces the use of emotion regulation, a psychological concept highly correlated with personality, for personality prediction. By combining this feature with emotion features, it retrieves few-shot examples and provides process CoTs for inferring labels from text. This approach enhances the understanding of LLM for personality within text and improves the performance in personality detection. Experimental results demonstrate that EERPD significantly enhances the accuracy and robustness of personality detection, outperforming previous SOTA by 15.05/4.29 in average F1 on the two benchmark datasets.

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Cited by 2 Pith papers

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  2. Cross-Lingual Attention Distillation with Personality-Informed Generative Augmentation for Multilingual Personality Recognition

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