GPU Accelerated RIS-based Influence Maximization Algorithm

arxiv(2020)

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摘要
Given a social network modeled as a weighted graph $G$, the influence maximization problem seeks $k$ vertices to become initially influenced, to maximize the expected number of influenced nodes under a particular diffusion model. The influence maximization problem has been proven to be NP-hard, and most proposed solutions to the problem are approximate greedy algorithms, which can guarantee a tunable approximation ratio for their results with respect to the optimal solution. The state-of-the-art algorithms are based on Reverse Influence Sampling (RIS) technique, which can offer both computational efficiency and non-trivial $(1-\frac{1}{e}-\epsilon)$-approximation ratio guarantee for any $\epsilon >0$. RIS-based algorithms, despite their lower computational cost compared to other methods, still require long running times to solve the problem in large-scale graphs with low values of $\epsilon$. In this paper, we present a novel and efficient parallel implementation of a RIS-based algorithm, namely IMM, on GPGPU. The proposed solution can significantly reduce the running time on large-scale graphs with low values of $\epsilon$. Furthermore, we show that our proposed parallel algorithm can solve other variations of the IM problem, only by applying minor modifications. Experimental results show that the proposed solution reduces the runtime by a factor up to $220 \times$.
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关键词
Graphics processing units,Integrated circuit modeling,Computational modeling,Acceleration,Greedy algorithms,Diffusion processes,Social networking (online)
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