Discovering Cooperative Structure Among Online Items for Attention Dynamics

Kanji Matsutani, Masahito Kumano, M. Kimura, Kazumi Saito, K. Ohara, H. Motoda
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Abstract

Social Media allows people to post widely and share the posted online-items. Such items gain their popularity by the amount of attention received. Thus, studies on modeling the arrival process of attention to an individual item have recently attracted a great deal of interest. In this paper, we propose, by combining a Dirichlet process with a Hawkes process in a novel way, a probabilistic model, called cooperative Hawkes process (CHP) model, to discover the cooperative structure among all the items involved. The proposed model takes into account all the arrival processes of shares for those items. We develop an efficient method of inferring the CHP model from the observed sequences of share events, and present an effective framework for predicting the future popularity of each of these items. Using synthetic data and real data from a cooking-recipe sharing site, we demonstrate the effectiveness of the CHP model, and uncover the cooperative structure among cooking-recipes in view of attention dynamics.
注意动力学在线项目间的合作结构研究
社交媒体允许人们广泛发布和分享在线发布的内容。这些项目因受到的关注而受到欢迎。因此,对单个项目的注意到达过程建模的研究最近引起了人们极大的兴趣。本文以一种新颖的方式将Dirichlet过程与Hawkes过程结合起来,提出了一种概率模型,称为合作Hawkes过程(cooperative Hawkes process, CHP)模型来发现所有项目之间的合作结构。建议的模型考虑了这些项目股份的所有到达过程。我们开发了一种从观察到的共享事件序列推断CHP模型的有效方法,并提出了一个有效的框架来预测这些项目的未来流行程度。利用合成数据和烹饪食谱共享网站的真实数据,验证了CHP模型的有效性,并从注意动力学的角度揭示了烹饪食谱之间的合作结构。
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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