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RTIM: A Real-Time Influence Maximization Strategy

机译:RTIM:实时影响最大化策略

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Influence Maximization (IM) consists in finding in a network the top-k influencers who will maximize the diffusion of information. However, the exponential growth of online advertisement is due to Real-Time Bidding (RTB) which targets users on webpages. It requires complex ad placement decisions in real-time to face a high-speed stream of users. In order to stay relevant, the IM problem should be updated to answer RTB needs. While traditional IM generates a static set of influencers, they do not fit with an RTB environment which requires dynamic influence targeting. This paper proposes RTIM, the first IM algorithm capable of targeting users in a RTB environment. We also analyze influence scores of users in several social networks and provide a thorough experimental process to compare static versus dynamic IM solutions.
机译:影响力最大化(IM)在于在网络中找到最能影响信息传播的前k位影响者。但是,在线广告的指数级增长是由于实时出价(RTB)将网页上的用户作为目标。它需要实时做出复杂的广告展示位置决策,才能面对高速的用户流。为了保持相关性,应更新IM问题以解决RTB需求。传统的IM会生成一组静态的影响者,但它们并不适合需要动态影响目标的RTB环境。本文提出了RTIM,这是第一种能够在RTB环境中定位用户的IM算法。我们还分析了多个社交网络中用户的影响力得分,并提供了一个完整的实验过程来比较静态和动态IM解决方案。

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