Budgeted Online Influence Maximization

arXiv cs.LG / 4/22/2026

📰 NewsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper proposes a new online influence maximization framework that optimizes for total campaign cost rather than the usual cardinality constraint on the selected influencer set.
  • It aims to better reflect real-world advertising scenarios where influencer costs vary and advertisers need maximum value under a fixed overall social advertising budget.
  • The authors present an algorithm built for an independent cascade diffusion model with edge-level semi-bandit feedback.
  • The paper provides both theoretical guarantees and experimental results, including an improved state-of-the-art regret bound when the traditional cardinality constraint is used.

Abstract

We introduce a new budgeted framework for online influence maximization, considering the total cost of an advertising campaign instead of the common cardinality constraint on a chosen influencer set. Our approach better models the real-world setting where the cost of influencers varies and advertisers want to find the best value for their overall social advertising budget. We propose an algorithm assuming an independent cascade diffusion model and edge level semi-bandit feedback, and provide both theoretical and experimental results. Our analysis is also valid for the cardinality constraint setting and improves the state of the art regret bound in this case.

Budgeted Online Influence Maximization | AI Navigate