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A Hybrid Recommender System for Patient-Doctor Matchmaking in Primary Care

9 August 2018
Qiwei Han
Mengxin Ji
Inigo Martinez de Rituerto de Troya
Manas Gaur
Leid Zejnilovic
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Abstract

We partner with a leading European healthcare provider and design a mechanism to match patients with family doctors in primary care. We define the matchmaking process for several distinct use cases given different levels of available information about patients. Then, we adopt a hybrid recommender system to present each patient a list of family doctor recommendations. In particular, we model patient trust of family doctors using a large-scale dataset of consultation histories, while accounting for the temporal dynamics of their relationships. Our proposed approach shows higher predictive accuracy than both a heuristic baseline and a collaborative filtering approach, and the proposed trust measure further improves model performance.

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