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Activity Maximization by Effective Information Diffusion in Social Networks

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arxiv 1610.07754 v1 pith:OYY5AH75 submitted 2016-10-25 cs.SI cs.DB

Activity Maximization by Effective Information Diffusion in Social Networks

classification cs.SI cs.DB
keywords problemdifferentinformationmaximizationactivitybounddataexcitements
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In a social network, even about the same information the excitements between different pairs of users are different. If you want to spread a piece of new information and maximize the expected total amount of excitements, which seed users should you choose? This problem indeed is substantially different from the renowned influence maximization problem and cannot be tackled using the existing approaches. In this paper, motivated by the demand in a few interesting applications, we model the novel problem of activity maximization. We tackle the problem systematically. We first analyze the complexity and the approximability of the problem. We develop an upper bound and a lower bound that are submodular so that the Sandwich framework can be applied. We then devise a polling-based randomized algorithm that guarantees a data dependent approximation factor. Our experiments on three real data sets clearly verify the effectiveness and scalability of our method, as well as the advantage of our method against the other heuristic methods.

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