English

Provably Efficient Reinforcement Learning for Online Adaptive Influence Maximization

Machine Learning 2022-07-01 v1 Social and Information Networks Machine Learning

Abstract

Online influence maximization aims to maximize the influence spread of a content in a social network with unknown network model by selecting a few seed nodes. Recent studies followed a non-adaptive setting, where the seed nodes are selected before the start of the diffusion process and network parameters are updated when the diffusion stops. We consider an adaptive version of content-dependent online influence maximization problem where the seed nodes are sequentially activated based on real-time feedback. In this paper, we formulate the problem as an infinite-horizon discounted MDP under a linear diffusion process and present a model-based reinforcement learning solution. Our algorithm maintains a network model estimate and selects seed users adaptively, exploring the social network while improving the optimal policy optimistically. We establish O~(T)\widetilde O(\sqrt{T}) regret bound for our algorithm. Empirical evaluations on synthetic network demonstrate the efficiency of our algorithm.

Keywords

Cite

@article{arxiv.2206.14846,
  title  = {Provably Efficient Reinforcement Learning for Online Adaptive Influence Maximization},
  author = {Kaixuan Huang and Yu Wu and Xuezhou Zhang and Shenyinying Tu and Qingyun Wu and Mengdi Wang and Huazheng Wang},
  journal= {arXiv preprint arXiv:2206.14846},
  year   = {2022}
}
R2 v1 2026-06-24T12:08:47.347Z