MLPR: Efficient influence maximization in linear threshold propagation model using linear programming

被引:0
|
作者
Farzaneh Ghayour-Baghbani
Masoud Asadpour
Heshaam Faili
机构
[1] University of Tehran,Department of Electrical and Computer Engineering
来源
Social Network Analysis and Mining | 2021年 / 11卷
关键词
Influence maximization; Linear program; Linear threshold model; Viral marketing;
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摘要
Influence maximization is an important research topic in social networks that has different applications such as analyzing spread of rumors, interest, adoption of innovations, and feed ranking. The goal is to select a limited size subset of vertices (called a seed-set) in a Social Graph, so that upon their activation, a maximum number of vertices of the graph become activated, due to the influence of the vertices on each other. The linear threshold model is one of two classic stochastic propagation models that describe the spread of influence in a network. We present a new approach called MLPR (matrix multiplication, linear programming, randomized rounding) with linear programming used as its core in order to solve the influence maximization problem in the linear threshold model. Experiments on four real data sets have shown the efficiency of the MLPR method in solving the influence maximization problem in the linear threshold model. The spread of the output seed-sets is as large as when the state-of-the-art algorithms are used; however, unlike most of the existing algorithms, the runtime of our method is independent of the seed size and does not increase with it.
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