Maximizing recommender's influence in a social network: An information theoretic perspective

Basak Guler, Kaya Tutuncuoglu, A. Yener
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引用次数: 3

Abstract

We study a social network in which individuals make decisions influenced by a recommender as well as the previous actions taken by themselves or other users. The recommender aims to tailor its suggestions to maximize the benefit from utilizing social interactions. We refer to this benefit as the recommender's influence which, in essence, measures the value of controlling the specific suggestions offered to the individuals. We show that this influence can be quantified by the directed information between the suggestions and people's actions. Accordingly, we identify the precise relationship between the social network-based recommendation system and a finite state communication channel whose capacity analysis provides the solution for the influence maximization problem for the recommender. Our results demonstrate that a recommender that tailors its suggestions based on the social dynamics of its customer base can have a significantly greater influence.
社交网络中推荐人影响力最大化:信息理论视角
我们研究了一个社会网络,在这个网络中,个人在受到推荐者以及自己或其他用户之前采取的行动的影响下做出决定。推荐的目的是定制它的建议,以最大限度地利用社会互动的好处。我们把这种好处称为推荐人的影响力,从本质上讲,它衡量的是控制向个人提供的具体建议的价值。我们表明,这种影响可以通过建议和人们行动之间的直接信息来量化。据此,我们确定了基于社交网络的推荐系统与有限状态通信通道之间的精确关系,有限状态通信通道的容量分析为推荐者提供了影响力最大化问题的解决方案。我们的研究结果表明,根据其客户群的社会动态量身定制建议的推荐人可以产生更大的影响力。
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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