psychological feature
PsyAttention: Psychological Attention Model for Personality Detection
Zhang, Baohua, Huang, Yongyi, Cui, Wenyao, Zhang, Huaping, Shang, Jianyun
Work on personality detection has tended to incorporate psychological features from different personality models, such as BigFive and MBTI. There are more than 900 psychological features, each of which is helpful for personality detection. However, when used in combination, the application of different calculation standards among these features may result in interference between features calculated using distinct systems, thereby introducing noise and reducing performance. This paper adapts different psychological models in the proposed PsyAttention for personality detection, which can effectively encode psychological features, reducing their number by 85%. In experiments on the BigFive and MBTI models, PysAttention achieved average accuracy of 65.66% and 86.30%, respectively, outperforming state-of-the-art methods, indicating that it is effective at encoding psychological features.
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Psychological Forest: Predicting Human Behavior
Plonsky, Ori (Technion - Israel Institute of Technology) | Erev, Ido (Technion - Israel Institute of Technology) | Hazan, Tamir (Technion - Israel Institute of Technology) | Tennenholtz, Moshe (Technion - Israel Institute of Technology)
We introduce a synergetic approach incorporating psychological theories and data science in service of predicting human behavior. Our method harnesses psychological theories to extract rigorous features to a data science algorithm. We demonstrate that this approach can be extremely powerful in a fundamental human choice setting. In particular, a random forest algorithm that makes use of psychological features that we derive, dubbed psychological forest, leads to prediction that significantly outperforms best practices in a choice prediction competition. Our results also suggest that this integrative approach is vital for data science tools to perform reasonably well on the data. Finally, we discuss how social scientists can learn from using this approach and conclude that integrating social and data science practices is a highly fruitful path for future research of human behavior.
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- Research Report > New Finding (0.66)