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Beyond the Words: Predicting User Personality from Heterogeneous Information

Published: 02 February 2017 Publication History

Abstract

An incisive understanding of user personality is not only essential to many scientific disciplines, but also has a profound business impact on practical applications such as digital marketing, personalized recommendation, mental diagnosis, and human resources management. Previous studies have demonstrated that language usage in social media is effective in personality prediction. However, except for single language features, a less researched direction is how to leverage the heterogeneous information on social media to have a better understanding of user personality. In this paper, we propose a Heterogeneous Information Ensemble framework, called HIE, to predict users' personality traits by integrating heterogeneous information including self-language usage, avatar, emoticon, and responsive patterns. In our framework, to improve the performance of personality prediction, we have designed different strategies extracting semantic representations to fully leverage heterogeneous information on social media. We evaluate our methods with extensive experiments based on a real-world data covering both personality survey results and social media usage from thousands of volunteers. The results reveal that our approaches significantly outperform several widely adopted state-of-the-art baseline methods. To figure out the utility of HIE in a real-world interactive setting, we also present DiPsy, a personalized chatbot to predict user personality through heterogeneous information in digital traces and conversation logs.

References

[1]
M. R. Barrick and M. K. Mount. The big five personality dimensions and job performance: a meta-analysis. Personnel psychology, 44(1):1--26, 1991.
[2]
V. Benet-Martinez and O. P. John. Los cinco grandes across cultures and ethnic groups: Multitrait-multimethod analyses of the big five in spanish and english. Journal of personality and social psychology, 75(3):729, 1998.
[3]
K. Bessière, A. F. Seay, and S. Kiesler. The ideal elf: Identity exploration in world of warcraft. CyberPsychology & Behavior, 10(4):530--535, 2007.
[4]
P. T. Costa and R. R. MacCrae. Revised NEO personality inventory (NEO PI-R) and NEO five-factor inventory (NEO FFI): Professional manual. Psychological Assessment Resources, 1992.
[5]
P. T. Costa and R. R. McCrae. Neo Pi-R. Psychological assessment resources, 1992.
[6]
R. A. Dunn and R. E. Guadagno. My avatar and me--gender and personality predictors of avatar-self discrepancy. Computers in Human Behavior, 28(1):97--106, 2012.
[7]
P. Ekman. An argument for basic emotions. Cognition & emotion, 6(3-4):169--200, 1992.
[8]
J. K. Ford. Brands laid bare: Using market research for evidence-based brand management. John Wiley & Sons, 2005.
[9]
L. R. Goldberg, J. A. Johnson, H. W. Eber, R. Hogan, M. C. Ashton, C. R. Cloninger, and H. G. Gough. The international personality item pool and the future of public-domain personality measures. Journal of Research in personality, 40(1):84--96, 2006.
[10]
L. Gou, M. X. Zhou, and H. Yang. Knowme and shareme: understanding automatically discovered personality traits from social media and user sharing preferences. In Proceedings of the 32nd annual ACM conference on Human factors in computing systems, pages 955--964. ACM, 2014.
[11]
K. He, X. Zhang, S. Ren, and J. Sun. Deep residual learning for image recognition. arXiv preprint arXiv:1512.03385, 2015.
[12]
O. P. John, E. M. Donahue, and R. L. Kentle. The big five inventory-versions 4a and 54, 1991.
[13]
O. P. John, L. P. Naumann, and C. J. Soto. Paradigm shift to the integrative big five trait taxonomy. Handbook of personality: Theory and research, 3:114--158, 2008.
[14]
Y. Kim. Convolutional neural networks for sentence classification. arXiv preprint arXiv:1408.5882, 2014.
[15]
M. Kosinski, D. Stillwell, and T. Graepel. Private traits and attributes are predictable from digital records of human behavior. Proceedings of the National Academy of Sciences, 110(15):5802--5805, 2013.
[16]
W. Mischel, Y. Shoda, R. E. Smith, and F. W. Mischel. Introduction to personality. University of Phoenix: A John Wiley & Sons, Ltd., Publication, 2004.
[17]
J. W. Pennebaker, M. E. Francis, and R. J. Booth. Linguistic inquiry and word count: Liwc 2001. Mahway: Lawrence Erlbaum Associates, 71:2001, 2001.
[18]
J. Piazza and J. M. Bering. Evolutionary cyber-psychology: Applying an evolutionary framework to internet behavior. Computers in Human Behavior, 25(6):1258--1269, 2009.
[19]
H. A. Schwartz, J. C. Eichstaedt, M. L. Kern, L. Dziurzynski, S. M. Ramones, M. Agrawal, A. Shah, M. Kosinski, D. Stillwell, M. E. Seligman, et al. Personality, gender, and age in the language of social media: The open-vocabulary approach. PloS one, 8(9):e73791, 2013.
[20]
Y. R. Tausczik and J. W. Pennebaker. The psychological meaning of words: Liwc and computerized text analysis methods. Journal of language and social psychology, 29(1):24--54, 2010.
[21]
D. H. Wolpert. Stacked generalization. Neural networks, 5(2):241--259, 1992.
[22]
T. Yarkoni. Personality in 100,000 words: A large-scale analysis of personality and word use among bloggers. Journal of research in personality, 44(3):363--373, 2010.
[23]
W. Youyou, M. Kosinski, and D. Stillwell. Computer-based personality judgments are more accurate than those made by humans. Proceedings of the National Academy of Sciences, 112(4):1036--1040, 2015.
[24]
Z. Zhao, H. Lu, D. Cai, X. He, and Y. Zhuang. User preference learning for online social recommendation.
[25]
Z. Zhao, Q. Yang, D. Cai, X. He, and Y. Zhuang. Expert finding for community-based question answering via ranking metric network learning.

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      cover image ACM Conferences
      WSDM '17: Proceedings of the Tenth ACM International Conference on Web Search and Data Mining
      February 2017
      868 pages
      ISBN:9781450346757
      DOI:10.1145/3018661
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      Published: 02 February 2017

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      Author Tags

      1. big five
      2. heterogeneous information
      3. user personality

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      • (2024)When LLM Meets Hypergraph: A Sociological Analysis on Personality via Online Social NetworksProceedings of the 33rd ACM International Conference on Information and Knowledge Management10.1145/3627673.3679646(2087-2096)Online publication date: 21-Oct-2024
      • (2024)Toward Collaboration Optimization in Microservice Projects Based on Developer Personalities2024 IEEE 21st International Conference on Software Architecture Companion (ICSA-C)10.1109/ICSA-C63560.2024.00024(95-99)Online publication date: 4-Jun-2024
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