论文标题
自适应影响最大化:如果有影响力的节点不愿为种子
Adaptive Influence Maximization: If Influential Node Unwilling to Be the Seed
论文作者
论文摘要
影响最大化问题试图找到一小部分节点,这些节点使预期影响扩散最大化,这已经进行了深入研究。他们都认为我们选择的种子集中的每个用户都会成功激活,然后传播影响。但是,在实际情况下,并非种子集中的所有用户都愿意成为影响者。基于此,我们考虑了每个用户与概率相关联,我们可以将她激活为种子,我们可以尝试多次激活她。在本文中,我们研究了自适应影响最大化,其中有多种激活(自适应IMMA)问题,其中我们选择了每种迭代中的一个节点,请观察她是否接受她是种子,如果是的,请等待观察影响扩散过程;如果没有,我们可以尝试以更高的成本再次激活她,或选择其他节点作为种子。我们在数学上对多个激活进行建模,并在整数晶格的域上定义它。我们提出了一个新概念,自适应DR-submodularity,并显示我们的自适应IMMA是在预期的背包约束下最大化自适应单调和DR-Submodular函数的问题。任何现有研究都不涵盖自适应DR-submodular最大化问题。因此,我们总结了其特性并全面研究了其近似性,这是对自适应性义务的现有分析的非平凡概括。此外,为了克服难以估计预期影响扩散的困难,我们将适应性贪婪的政策与采样技术相结合而不会失去近似比,但会降低时间复杂性。最后,我们在几个实际数据集上进行实验,以评估我们提出的政策的有效性和效率。
Influence maximization problem attempts to find a small subset of nodes that makes the expected influence spread maximized, which has been researched intensively before. They all assumed that each user in the seed set we select is activated successfully and then spread the influence. However, in the real scenario, not all users in the seed set are willing to be an influencer. Based on that, we consider each user associated with a probability with which we can activate her as a seed, and we can attempt to activate her many times. In this paper, we study the adaptive influence maximization with multiple activations (Adaptive-IMMA) problem, where we select a node in each iteration, observe whether she accepts to be a seed, if yes, wait to observe the influence diffusion process; If no, we can attempt to activate her again with a higher cost or select another node as a seed. We model the multiple activations mathematically and define it on the domain of integer lattice. We propose a new concept, adaptive dr-submodularity, and show our Adaptive-IMMA is the problem that maximizing an adaptive monotone and dr-submodular function under the expected knapsack constraint. Adaptive dr-submodular maximization problem is never covered by any existing studies. Thus, we summarize its properties and study its approximability comprehensively, which is a non-trivial generalization of existing analysis about adaptive submodularity. Besides, to overcome the difficulty to estimate the expected influence spread, we combine our adaptive greedy policy with sampling techniques without losing the approximation ratio but reducing the time complexity. Finally, we conduct experiments on several real datasets to evaluate the effectiveness and efficiency of our proposed policies.