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Predicting Personality on Social Media with Semi-supervised Learning

机译:通过半监督学习预测社交媒体的个性

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Personality research on social media is a hot topic recently due to the rapid development of social media as well as the central importance of personality study in psychology, but most studies are conducted on inadequate label samples. Our research aims to explore the usage of unlabeled samples to improve the prediction accuracy. By conducting n user study with 1792 users, we adopt local linear semi-supervised regression algorithm to predict the personality traits of Micro blog users. Given a set of Micro blog users' public information (e.g., Number of followers) and a few labeled users, the task is to predict personality of other unlabeled users. The local linear semi-supervised regression algorithm has been employed to establish prediction model in this paper, and the experimental results demonstrate the usage of unlabeled data can improve the accuracy of prediction.
机译:社交媒体的个性研究是最近的热门话题,因为社交媒体的快速发展以及人格研究在心理学中的核心重要性,但大多数研究都是在不足的标签样本上进行。 我们的研究旨在探讨未标记的样本的用法来提高预测准确性。 通过使用1792个用户进行N个用户学习,我们采用局部线性半监控回归算法来预测微博客用户的个性特征。 给定一套微博客用户的公共信息(例如,粉丝数量)和一些标记的用户,任务是预测其他未标记用户的个性。 本地线性半监控回归算法已经采用本文建立预测模型,实验结果表明了未标记数据的使用可以提高预测的准确性。

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