Reviewing Recommender Systems in the Medical Domain

Katharina Brunner, B. Hametner
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Abstract

. Medical recommender systems are increasing in popularity within the digital health sector. Two main principles for personalised support are just-in-time interventions, and adaptiveness of treatment. Intervention concepts using these principals are called JITAIs, and they aid clients in self-management for health-related issues. In this contribution, the JITAI framework is introduced, and its advantages for recommender systems are discussed. Mathematically, the JITAI concept can be interpreted as a contextual or regular multi-armed bandit problem, which is solved via a bandit algorithm. After discussing several algorithmic strategies of bandit algorithms and elaborating on their differences, the Thompson Sampling strategy is identified as a practical solution for real-life applications using the JTIAI framework. Sub-sequently, existing recommender systems based on the (contextual) multi-armed bandit approach are reviewed, and the disruption of the algorithm’s learning process by instances of missing data is found to be a prevalent obstacle. An algorithm called Thompson Sampling with Re-stricted Context is put forward as a solution, where missing data is processed within the bandit setting.
回顾医学领域的推荐系统
. 医疗推荐系统在数字卫生领域越来越受欢迎。个性化支持的两个主要原则是及时干预和治疗的适应性。使用这些原则的干预概念被称为jitai,它们帮助客户对健康相关问题进行自我管理。在这篇文章中,介绍了JITAI框架,并讨论了它在推荐系统中的优势。从数学上讲,JITAI概念可以解释为上下文或规则的多臂强盗问题,该问题通过强盗算法解决。在讨论了强盗算法的几种算法策略并详细说明了它们之间的差异之后,Thompson采样策略被确定为使用JTIAI框架的实际应用的实用解决方案。随后,对基于(上下文)多臂强盗方法的现有推荐系统进行了回顾,发现缺失数据实例对算法学习过程的破坏是一个普遍的障碍。提出了一种基于重限制上下文的汤普森采样算法作为解决方案,该算法在强盗设置内处理丢失的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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