Correlation Robust Influence Maximization

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Authors Louis Chen, Divya Padmanabhan, Chee Chin Lim, Karthik Natarajan arXiv ID 2010.14620 Category cs.SI: Social & Info Networks Cross-listed cs.AI, cs.DS, cs.LG, math.OC Citations 2 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
We propose a distributionally robust model for the influence maximization problem. Unlike the classic independent cascade model \citep{kempe2003maximizing}, this model's diffusion process is adversarially adapted to the choice of seed set. Hence, instead of optimizing under the assumption that all influence relationships in the network are independent, we seek a seed set whose expected influence under the worst correlation, i.e. the "worst-case, expected influence", is maximized. We show that this worst-case influence can be efficiently computed, and though the optimization is NP-hard, a ($1 - 1/e$) approximation guarantee holds. We also analyze the structure to the adversary's choice of diffusion process, and contrast with established models. Beyond the key computational advantages, we also highlight the extent to which the independence assumption may cost optimality, and provide insights from numerical experiments comparing the adversarial and independent cascade model.
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