Beyond Adaptive Submodularity: Adaptive Influence Maximization with Intermediary Constraints
Shatian Wang, Zhen Xu, Van-Anh Truong

TL;DR
This paper studies influence maximization over social networks with a new intermediary constraint, developing adaptive policies and online learning algorithms that outperform baselines in complex diffusion settings.
Contribution
It introduces a novel intermediary constraint in adaptive influence maximization, and develops a sample path analysis and online learning algorithms for this complex model.
Findings
Greedy policy achieves at least 1-1/e - epsilon of optimal influence.
Proposed online learning algorithm has bounded regret under mild assumptions.
Numerical experiments show the algorithm outperforms baseline strategies.
Abstract
We consider a brand with a given budget that wants to promote a product over multiple rounds of influencer marketing. In each round, it commissions an influencer to promote the product over a social network, and then observes the subsequent diffusion of the product before adaptively choosing the next influencer to commission. This process terminates when the budget is exhausted. We assume that the diffusion process follows the popular Independent Cascade model. We also consider an online learning setting, where the brand initially does not know the diffusion parameters associated with the model, and has to gradually learn the parameters over time. Unlike in existing models, the rounds in our model are correlated through an intermediary constraint: each user can be commissioned for an unlimited number of times. However, each user will spread influence without commission at most once.…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Advanced Bandit Algorithms Research
