Modeling a Retweet Network via an Adaptive Bayesian Approach

Bin Bi, Junghoo Cho
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引用次数: 26

Abstract

Twitter (and similar microblogging services) has become a central nexus for discussion of the topics of the day. Twitter data contains rich content and structured information on users' topics of interest and behavior patterns. Correctly analyzing and modeling Twitter data enables the prediction of the user behavior and preference in a variety of practical applications, such as tweet recommendation and followee recommendation. Although a number of models have been developed on Twitter data in prior work, most of these only model the tweets from users, while neglecting their valuable retweet information in the data. Models would enhance their predictive power by incorporating users' retweet content as well as their retweet behavior. In this paper, we propose two novel Bayesian nonparametric models, URM and UCM, on retweet data. Both of them are able to integrate the analysis of tweet text and users' retweet behavior in the same probabilistic framework. Moreover, they both jointly model users' interest in tweet and retweet. As nonparametric models, URM and UCM can automatically determine the parameters of the models based on input data, avoiding arbitrary parameter settings. Extensive experiments on real-world Twitter data show that both URM and UCM are superior to all the baselines, while UCM further outperforms URM, confirming the appropriateness of our models in retweet modeling.
基于自适应贝叶斯方法的转发网络建模
Twitter(以及类似的微博服务)已经成为当今话题讨论的中心纽带。Twitter数据包含关于用户感兴趣的主题和行为模式的丰富内容和结构化信息。对Twitter数据进行正确的分析和建模,可以在各种实际应用中预测用户的行为和偏好,例如推特推荐和关注者推荐。虽然在之前的工作中已经针对Twitter数据开发了许多模型,但大多数模型只对用户的推文进行建模,而忽略了数据中用户有价值的转发信息。模型将通过整合用户的转发内容和转发行为来增强其预测能力。本文提出了两种新的贝叶斯非参数模型:URM和UCM。两者都能够将推文分析和用户转发行为在同一概率框架下进行整合。此外,它们都共同模拟用户对tweet和转发的兴趣。作为非参数模型,URM和UCM可以根据输入数据自动确定模型的参数,避免任意设置参数。在真实Twitter数据上的大量实验表明,URM和UCM都优于所有基线,而UCM进一步优于URM,证实了我们的模型在转发建模中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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