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Distributed Online Submodular Maximization under Communication Delays: A Simultaneous Decision-Making Approach

Zirui Xu, Vasileios Tzoumas

Abstract

We provide a distributed online algorithm for multi-agent submodular maximization under communication delays. We are motivated by the future distributed information-gathering tasks in unknown and dynamic environments, where utility functions naturally exhibit the diminishing-returns property, i.e., submodularity. Existing approaches for online submodular maximization either rely on sequential multi-hop communication, resulting in prohibitive delays and restrictive connectivity assumptions, or restrict each agent's coordination to its one-hop neighborhood only, thereby limiting the coordination performance. To address the issue, we provide the Distributed Online Greedy (DOG) algorithm, which integrates tools from adversarial bandit learning with delayed feedback to enable simultaneous decision-making across arbitrary network topologies. We provide the approximation performance of DOG against an optimal solution, capturing the suboptimality cost due to decentralization as a function of the network structure. Our analyses further reveal a trade-off between coordination performance and convergence time, determined by the magnitude of communication delays. By this trade-off, DOG spans the spectrum between the state-of-the-art fully centralized online coordination approach [1] and fully decentralized one-hop coordination approach [2].

Distributed Online Submodular Maximization under Communication Delays: A Simultaneous Decision-Making Approach

Abstract

We provide a distributed online algorithm for multi-agent submodular maximization under communication delays. We are motivated by the future distributed information-gathering tasks in unknown and dynamic environments, where utility functions naturally exhibit the diminishing-returns property, i.e., submodularity. Existing approaches for online submodular maximization either rely on sequential multi-hop communication, resulting in prohibitive delays and restrictive connectivity assumptions, or restrict each agent's coordination to its one-hop neighborhood only, thereby limiting the coordination performance. To address the issue, we provide the Distributed Online Greedy (DOG) algorithm, which integrates tools from adversarial bandit learning with delayed feedback to enable simultaneous decision-making across arbitrary network topologies. We provide the approximation performance of DOG against an optimal solution, capturing the suboptimality cost due to decentralization as a function of the network structure. Our analyses further reveal a trade-off between coordination performance and convergence time, determined by the magnitude of communication delays. By this trade-off, DOG spans the spectrum between the state-of-the-art fully centralized online coordination approach [1] and fully decentralized one-hop coordination approach [2].

Paper Structure

This paper contains 13 sections, 4 theorems, 13 equations, 1 algorithm.

Key Result

Theorem 1

Over $t\in [T]$, given the communication network $\{{\@fontswitch\mathcal{N}}_{i}\}_{i\in{\@fontswitch\mathcal{N}}}$, DOG DOG instructs each agent $i\in{\@fontswitch\mathcal{N}}$ to select actions $\{a_{i,t}\}_{t\in[T]}$ that guarantee where $\kappa_{f}\triangleq\max_{t\in [T]}\kappa_{f_t}$, $\overline{|{\@fontswitch\mathcal{V}}|\,+\,d} \triangleq\max_{i\in{\@fontswitch\mathcal{N}}}\, (|{\@fontsw

Theorems & Definitions (13)

  • Definition 1: Normalized and Non-Decreasing Submodular Set Function fisher1978analysis
  • Definition 2: 2nd-order Submodular Set Function crama1989characterizationfoldes2005submodularity
  • Definition 3: Static Regret for Each Agent $i$
  • Definition 4: Centralization of Information xu2025communication
  • Definition 5: Curvature conforti1984submodular
  • Theorem 1: Approximation Performance
  • Proposition 1: Computational Complexity
  • proof
  • Proposition 2: Communication Complexity
  • proof
  • ...and 3 more