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Adaptive Frontier Exploration on Graphs with Applications to Network-Based Disease Testing

Adaptive Frontier Exploration on Graphs with Applications to Network-Based Disease Testing

来源:Arxiv_logoArxiv
英文摘要

We study a sequential decision-making problem on a $n$-node graph $G$ where each node has an unknown label from a finite set $\mathbf{\Sigma}$, drawn from a joint distribution $P$ that is Markov with respect to $G$. At each step, selecting a node reveals its label and yields a label-dependent reward. The goal is to adaptively choose nodes to maximize expected accumulated discounted rewards. We impose a frontier exploration constraint, where actions are limited to neighbors of previously selected nodes, reflecting practical constraints in settings such as contact tracing and robotic exploration. We design a Gittins index-based policy that applies to general graphs and is provably optimal when $G$ is a forest. Our implementation runs in $O(n^2 \cdot |\mathbf{\Sigma}|^2)$ time while using $O(n \cdot |\mathbf{\Sigma}|^2)$ oracle calls to $P$ and $O(n^2 \cdot |\mathbf{\Sigma}|)$ space. Experiments on synthetic and real-world graphs show that our method consistently outperforms natural baselines, including in non-tree, budget-limited, and undiscounted settings. For example, in HIV testing simulations on real-world sexual interaction networks, our policy detects nearly all positive cases with only half the population tested, substantially outperforming other baselines.

Davin Choo、Yuqi Pan、Tonghan Wang、Milind Tambe、Alastair van Heerden、Cheryl Johnson

计算技术、计算机技术医学研究方法

Davin Choo,Yuqi Pan,Tonghan Wang,Milind Tambe,Alastair van Heerden,Cheryl Johnson.Adaptive Frontier Exploration on Graphs with Applications to Network-Based Disease Testing[EB/OL].(2025-05-27)[2025-06-07].https://arxiv.org/abs/2505.21671.点此复制

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