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A Novel Adaptive Conditional Probability-Based Predicting Model for User’s Personality Traits

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  • Mengmeng Wang
  • Wanli Zuo
  • Ying Wang

Abstract

With the pervasive increase in social media use, the explosion of users’ generated data provides a potentially very rich source of information, which plays an important role in helping online researchers understand user’s behaviors deeply. Since user’s personality traits are the driving force of user’s behaviors, hence, in this paper, along with social network features, we first extract linguistic features, emotional statistical features, and topic features from user’s Facebook status updates, followed by quantifying importance of features via Kendall correlation coefficient. And then, on the basis of weighted features and dynamic updated thresholds of personality traits, we deploy a novel adaptive conditional probability-based predicting model which considers prior knowledge of correlations between user’s personality traits to predict user’s Big Five personality traits. In the experimental work, we explore the existence of correlations between user’s personality traits which provides a better theoretical support for our proposed method. Moreover, on the same Facebook dataset, compared to other methods, our method can achieve an -measure of 80.6% when taking into account correlations between user’s personality traits, and there is an impressive improvement of 5.8% over other approaches.

Suggested Citation

  • Mengmeng Wang & Wanli Zuo & Ying Wang, 2015. "A Novel Adaptive Conditional Probability-Based Predicting Model for User’s Personality Traits," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-14, August.
  • Handle: RePEc:hin:jnlmpe:472917
    DOI: 10.1155/2015/472917
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