LGSIFeb 3, 2025

DiffIM: Differentiable Influence Minimization with Surrogate Modeling and Continuous Relaxation

arXiv:2502.01031v1h-index: 10AAAI
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient rumor blocking in social networks for practitioners, offering a significant speed-up over existing methods, though it is incremental in improving computational efficiency.

The paper tackles the computationally expensive and discrete influence minimization problem in social networks by proposing DiffIM, which uses differentiable schemes like surrogate modeling and continuous relaxation to accelerate the process, achieving up to 15,160X speed improvement over baselines with little to no performance degradation.

In social networks, people influence each other through social links, which can be represented as propagation among nodes in graphs. Influence minimization (IMIN) is the problem of manipulating the structures of an input graph (e.g., removing edges) to reduce the propagation among nodes. IMIN can represent time-critical real-world applications, such as rumor blocking, but IMIN is theoretically difficult and computationally expensive. Moreover, the discrete nature of IMIN hinders the usage of powerful machine learning techniques, which requires differentiable computation. In this work, we propose DiffIM, a novel method for IMIN with two differentiable schemes for acceleration: (1) surrogate modeling for efficient influence estimation, which avoids time-consuming simulations (e.g., Monte Carlo), and (2) the continuous relaxation of decisions, which avoids the evaluation of individual discrete decisions (e.g., removing an edge). We further propose a third accelerating scheme, gradient-driven selection, that chooses edges instantly based on gradients without optimization (spec., gradient descent iterations) on each test instance. Through extensive experiments on real-world graphs, we show that each proposed scheme significantly improves speed with little (or even no) IMIN performance degradation. Our method is Pareto-optimal (i.e., no baseline is faster and more effective than it) and typically several orders of magnitude (spec., up to 15,160X) faster than the most effective baseline while being more effective.

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