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Joint user mention behavior modeling for mentionee recommendation

机译:联合用户提及提取的行为建模建议

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As an emerging online interaction service in Twitter-like social media systems,mentionserves to significantly improve both user interaction experience and information propagation. In recent years, the problem of mentionee recommendation, i.e., recommending mentionees (mentioned users) when mentioners (mentioning users) mention others, has received considerable attention. However, the extreme sparsity of mentioner-mentionee matrix creates a severe challenge. While an increasing line of work has exploited diverse effects such as the textual content and spatio-temporal context influences to cope with this challenge, there lacks a comprehensive study of the joint effect of all these influencing factors. In light of this, we propose a joint latent-class probabilistic model, named Joint Topic-Area Model (JTAM), to tackle the mentionee recommendation problem by simultaneously learning and modeling users' semantic interests, the spatio-temporal mentioning patterns of mentioners, the geographical distribution of mentionees, and their joint effects on users' mention behaviors in a unified way. Moreover, to facilitate online query performance, we design an efficient query answering approach that enables fast top-kmentionee recommendation. To evaluate the performance of our method, we conduct extensive experiments on a large real-world dataset. The results demonstrate the superiority of our method in recommending mentionees in terms of both effectiveness and efficiency compared with other state-of-the-art methods.
机译:作为推特式社交媒体系统中的新兴在线互动服务,Mentionserves以显着提高用户交互体验和信息传播。近年来,当提到(提及用户)提及其他人时,建议建议的问题,即建议(提到的用户)已经受到了相当大的关注。然而,提升者矩阵的极端稀疏性会产生严重的挑战。虽然增加的工作线条已经利用了不同的效果,如文本内容和时空环境的影响,但应对这一挑战的影响,但缺乏对所有这些影响因素的联合效应的全面研究。鉴于此,我们提出了一个联合潜在的概率模型,命名为联合主题区域模型(JTAM),通过同时学习和建模用户的语义兴趣,提及提及模式的时空提高了提升的推荐问题,被提式的地理分布,并以统一的方式对用户提及行为的联合影响。此外,为方便在线查询性能,我们设计了一种高效的查询应答方法,可实现快速的顶级Kmentionee的推荐。为了评估我们的方法的表现,我们对大型真实数据集进行了广泛的实验。结果表明,与其他最先进的方法相比,在效率和效率方面,我们在建议和效率方面的优势。

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