著者
山田 康輔 笹野 遼平 武田 浩一
出版者
一般社団法人 人工知能学会
雑誌
人工知能学会論文誌 (ISSN:13460714)
巻号頁・発行日
vol.35, no.4, pp.B-K22_1-12, 2020-07-01 (Released:2020-07-01)
参考文献数
20

It has been reported that a person’s remarks and behaviors reflect the person’s personality. Several recent studies have shown that textual information of user posts and user behaviors such as liking and reblogging the specific posts are useful for predicting the personality of Social Networking Service (SNS) users. However, less attention has been paid to the textual information derived from the user behaviors. In this paper, we investigate the effect of using textual information with user behaviors for personality prediction. We focus on the personality diagnosis website and make a large dataset on SNS users and their personalities by collecting users who posted the personality diagnosis on Twitter. Using this dataset, we work on personality prediction as a set of binary classification tasks. Our experiments on the personality prediction of Twitter users show that the textual information of user behaviors is more useful than the co-occurrence information of the user behaviors and the performance of prediction is strongly affected by the number of the user behaviors, which were incorporated into the prediction. We also show that user behavior information is crucial for predicting the personality of users who do not post frequently.

言及状況

外部データベース (DOI)

Twitter (7 users, 8 posts, 11 favorites)

論文リンク。 https://t.co/vmg2aWY4BK
知らない間に収集されてそうで面白い >16Personalities の Web サイトの URL と#16Personalities というハッシュタグ,および性格診断結果を含む日本語の投稿を行ったユーザを対象に収集した.この結果,72,847 ユーザが収集された https://t.co/yIu9vUhws7

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