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Predicting personality traits of Chinese users based on Facebook wall posts

机译:基于Facebook Wall Post预测中国用户的个性特征

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Automatically recognizing personality based on historical action logs in online social networks is a promising method to infer a person's behaviors, and it has received a lot of attention lately as it might lead to the construction of a better personal recommendation system. However, very few previous works in the literature put their focus on predicting personality from Chinese texts. As Chinese texts are much more difficult to delimit than English texts, it poses more challenges in recognizing personality from Chinese texts. In this paper, we attempt to classify the personality traits from Chinese texts. We collected a dataset with posts and personality scores of 222 Facebook users who use Chinese as their main written language. Then, we used Jieba, a Chinese text segmentation tool, as the tokenizer for the task of text segmentation, and the Support Vector Machine (SVM) as the learning algorithm for personality classification. Our experimental results show that the performance in precision and recall can be significantly improved with the help of text segmentation. Moreover, exploiting side information, such as the number of friends, could improve the performance further. One interesting finding from our experiments is that extraverts seem to write more sentences and use more common words than introverts. This indicates that extraverts are more willing to share their mood and life with others than introverts.
机译:根据在线社交网络的历史行动日志自动识别个性是一种有希望的方法来推断一个人的行为,并且最近收到了很多关注,因为它可能导致建造更好的个人推荐系统。然而,在文献中非常少数以前的作品投注了从中国文本预测人格。由于中国文本比英文文本更难以分隔,因此在识别中国文本的人格方面会产生更多挑战。在本文中,我们试图将中文文本的个性特征分类。我们将数据集与222个使用中文作为主要书面语言的帖子和个性分数为222个Facebook用户。然后,我们使用了jieba,一个中文文本分段工具,作为Texeneizer的文本分割任务,以及支持向量机(SVM)作为人格分类的学习算法。我们的实验结果表明,在文本分割的帮助下,可以显着改善精度和召回的性能。此外,利用诸如朋友数量的侧面信息可以进一步提高性能。我们的实验中的一个有趣的发现是,外向似乎写得更多的句子,并使用比内向的更常见的话语。这表明Extraphyts更愿意与别人分享他们的情绪和生活而不是内向的人。

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