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Main Authors: Gu, Zhexi, Ying, Jiaxin, Wang, Xu-Wen, Chen, Can
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.02150
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author Gu, Zhexi
Ying, Jiaxin
Wang, Xu-Wen
Chen, Can
author_facet Gu, Zhexi
Ying, Jiaxin
Wang, Xu-Wen
Chen, Can
contents Accurate prediction of physician referral links is essential for optimizing care coordination and reducing fragmentation in healthcare delivery. However, existing computational methods, ranging from triadic closure heuristics to graph neural networks, fail to capture the intrinsic properties of physician referral networks, including sparsity, disassortative degree mixing, and hub-dominated topology. Here, we propose H3, a healthcare three-hop index that addresses these limitations by modeling indirect referral pathways through intermediate physicians, with degree-based normalization and a redundancy penalty to mitigate hub-mediated noise. Using Medicare Physician Shared Patient Patterns data, we evaluate H3 under two complementary prediction regimes: within-period prediction, which assesses recovery of contemporaneous referral links under sparse conditions, and cross-period prediction, which tests robustness to temporal shift as referral windows expand. Across both regimes, H3 consistently outperforms classical heuristics and deep learning-based baselines. Unlike black-box neural network approaches, H3 produces fully decomposable predictions traceable to specific intermediary physicians, offering a transparent and deployable solution for referral network completion.
format Preprint
id arxiv_https___arxiv_org_abs_2605_02150
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle H3: A Healthcare Three-Hop Index for Physician Referral Network Prediction
Gu, Zhexi
Ying, Jiaxin
Wang, Xu-Wen
Chen, Can
Social and Information Networks
Machine Learning
Accurate prediction of physician referral links is essential for optimizing care coordination and reducing fragmentation in healthcare delivery. However, existing computational methods, ranging from triadic closure heuristics to graph neural networks, fail to capture the intrinsic properties of physician referral networks, including sparsity, disassortative degree mixing, and hub-dominated topology. Here, we propose H3, a healthcare three-hop index that addresses these limitations by modeling indirect referral pathways through intermediate physicians, with degree-based normalization and a redundancy penalty to mitigate hub-mediated noise. Using Medicare Physician Shared Patient Patterns data, we evaluate H3 under two complementary prediction regimes: within-period prediction, which assesses recovery of contemporaneous referral links under sparse conditions, and cross-period prediction, which tests robustness to temporal shift as referral windows expand. Across both regimes, H3 consistently outperforms classical heuristics and deep learning-based baselines. Unlike black-box neural network approaches, H3 produces fully decomposable predictions traceable to specific intermediary physicians, offering a transparent and deployable solution for referral network completion.
title H3: A Healthcare Three-Hop Index for Physician Referral Network Prediction
topic Social and Information Networks
Machine Learning
url https://arxiv.org/abs/2605.02150