Twenty Years of Personality Computing: Threats, Challenges and Future Directions
- URL: http://arxiv.org/abs/2503.02082v1
- Date: Mon, 03 Mar 2025 22:03:48 GMT
- Title: Twenty Years of Personality Computing: Threats, Challenges and Future Directions
- Authors: Fabio Celli, Aleksandar Kartelj, Miljan Đorđević, Derwin Suhartono, Vladimir Filipović, Veljko Milutinović, Georgios Spathoulas, Alessandro Vinciarelli, Michal Kosinski, Bruno Lepri,
- Abstract summary: Personality Computing is a field at the intersection of Personality Psychology and Computer Science.<n>This paper provides an overview of the field, explores key methodologies, discusses the challenges and threats, and outlines potential future directions for responsible development and deployment of Personality Computing technologies.
- Score: 76.46813522861632
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Personality Computing is a field at the intersection of Personality Psychology and Computer Science. Started in 2005, research in the field utilizes computational methods to understand and predict human personality traits. The expansion of the field has been very rapid and, by analyzing digital footprints (text, images, social media, etc.), it helped to develop systems that recognize and even replicate human personality. While offering promising applications in talent recruiting, marketing and healthcare, the ethical implications of Personality Computing are significant. Concerns include data privacy, algorithmic bias, and the potential for manipulation by personality-aware Artificial Intelligence. This paper provides an overview of the field, explores key methodologies, discusses the challenges and threats, and outlines potential future directions for responsible development and deployment of Personality Computing technologies.
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