A Survey on Influence Maximization: From an ML-Based Combinatorial Optimization
Yandi Li, Haobo Gao, Yunxuan Gao, Jianxiong Guo, Weili Wu

TL;DR
This survey reviews recent ML-based methods, especially Deep Reinforcement Learning, for influence maximization in social networks, highlighting their advantages over traditional algorithms and discussing future challenges.
Contribution
It provides a comprehensive overview of ML-based approaches to influence maximization, emphasizing recent developments and identifying key challenges for future research.
Findings
ML-based methods offer faster solutions and better generalization.
Deep Reinforcement Learning shows promise in solving IM problems.
Traditional heuristics lack theoretical guarantees.
Abstract
Influence Maximization (IM) is a classical combinatorial optimization problem, which can be widely used in mobile networks, social computing, and recommendation systems. It aims at selecting a small number of users such that maximizing the influence spread across the online social network. Because of its potential commercial and academic value, there are a lot of researchers focusing on studying the IM problem from different perspectives. The main challenge comes from the NP-hardness of the IM problem and \#P-hardness of estimating the influence spread, thus traditional algorithms for overcoming them can be categorized into two classes: heuristic algorithms and approximation algorithms. However, there is no theoretical guarantee for heuristic algorithms, and the theoretical design is close to the limit. Therefore, it is almost impossible to further optimize and improve their…
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Taxonomy
TopicsComplex Network Analysis Techniques · Text and Document Classification Technologies · Advanced Graph Neural Networks
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
