Non-operative Personality Prediction Based on Knowledge Driven

H. Tao, Li Bi-cheng, Lin Zheng-Chao
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Abstract

At present, most personality trait prediction studies mainly use the cooperative method, that is, using the scale to collect users' personality trait information. This method mainly has the disadvantages of strong subjectivity, limited quantity and quality, insufficient lasting stability and requiring users to cooperate. At the same time, the mainstream method uses the black box method of supervised learning, which belongs to the data-driven method and is not interpretable. Knowledge driven dictionary method is expected to solve these problems and realize non cooperative personality prediction. This paper proposes a method of constructing personality dictionary based on the combination of knowledge base and corpus. On the other hand, aiming at the unclear physical meaning of personality scoring algorithm in personality analysis using dictionary method, this paper proposes a personality scoring algorithm based on vocabulary weight and word frequency. The results show that the personality dictionary constructed by this method can ensure both timeliness and comprehensiveness in vocabulary. The experimental results show that the personality dictionary constructed by this method can ensure both timeliness and comprehensiveness in vocabulary. The average similarity between the predicted results of Weibo personality dictionary and the results of the scale is 61.98%, which is close to the results of BFM algorithm,which can effectively predict users' personality.
基于知识驱动的非手术人格预测
目前,大多数人格特质预测研究主要采用合作方法,即利用量表收集用户的人格特质信息。这种方法主要存在主观性强、数量和质量有限、持久稳定性不足、需要用户配合等缺点。同时,主流方法采用监督学习的黑箱方法,属于数据驱动的方法,不具有可解释性。知识驱动字典方法有望解决这些问题,实现非合作人格预测。提出了一种基于知识库和语料库相结合的人格词典构建方法。另一方面,针对字典法人格分析中人格评分算法物理意义不明确的问题,本文提出了一种基于词汇权值和词频的人格评分算法。结果表明,该方法构建的人格词典能够保证词汇的及时性和全面性。实验结果表明,该方法构建的人格词典能够保证词汇的及时性和全面性。微博个性词典预测结果与量表结果的平均相似度为61.98%,接近BFM算法的预测结果,能够有效预测用户的个性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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