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引用次数: 0

摘要

推特是一个流行的社交媒体平台,用于分享信息。转发另一个用户的推文被认为是一种强大的信息传播机制。近年来,预测一条推文是否会被转发已经引起了越来越多的兴趣。在这项研究中,我们研究了转发的预测和推文功能对转发的影响,使用标签为#BlackHistoryMonth的推文作为我们的实验空间,#BlackHistoryMonth是2023年2月美国推特议程的热门趋势。测试的推文特征包括直接获得的特征和使用这些特征获得的五个特征。我们使用随机森林算法根据所有这些推文特征对转发进行分类。我们确定了推特分类功能对推特转发重要性的影响。通过添加我们新测试的功能,我们将推特功能类别的F-1分数提高了约6%。这项研究有助于更好地理解社交媒体的使用和用户行为,以及营销和广告策略的发展。
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Improving Retweet Prediction via Tweet Features
Twitter is a popular social media platform used to share information. Retweeting another user's tweet is considered a powerful mechanism for disseminating information. Predicting whether a a tweet will be retweet has gained increasing interest in recent years. In this study, we examined the prediction of retweeting and the influence of tweet features on retweeting, using tweets with the hashtag #BlackHistoryMonth, which was a top trend in the US Twitter agenda in February 2023, as our experimental space. The tweet features tested included both directly obtainable features and five features obtained using these features. We used the Random Forest algorithm to classify retweeting based on all of these tweet features. We identified the impact of categorized tweet features on the importance of retweeting on Twitter. By adding our newly tested features, we improved the tweet features category by some 6% in terms of F-1 score. This study can contribute to a better understanding of social media usage and user behavior, as well as the development of marketing and advertising strategies.
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