Optimal service resource management strategy for IoT-based health information system considering value co-creation of users

J. Fang, Vincent C.S. Lee, Haiyan Wang
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Abstract

PurposeThis paper explores optimal service resource management strategy, a continuous challenge for health information service to enhance service performance, optimise service resource utilisation and deliver interactive health information service.Design/methodology/approachAn adaptive optimal service resource management strategy was developed considering a value co-creation model in health information service with a focus on collaborative and interactive with users. The deep reinforcement learning algorithm was embedded in the Internet of Things (IoT)-based health information service system (I-HISS) to allocate service resources by controlling service provision and service adaptation based on user engagement behaviour. The simulation experiments were conducted to evaluate the significance of the proposed algorithm under different user reactions to the health information service.FindingsThe results indicate that the proposed service resource management strategy, considering user co-creation in the service delivery, process improved both the service provider’s business revenue and users' individual benefits.Practical implicationsThe findings may facilitate the design and implementation of health information services that can achieve a high user service experience with low service operation costs.Originality/valueThis study is amongst the first to propose a service resource management model in I-HISS, considering the value co-creation of the user in the service-dominant logic. The novel artificial intelligence algorithm is developed using the deep reinforcement learning method to learn the adaptive service resource management strategy. The results emphasise user engagement in the health information service process.
基于物联网的医疗信息系统的最佳服务资源管理策略,考虑用户的价值共创
本文探讨了优化服务资源管理策略,这是卫生信息服务在提高服务绩效、优化服务资源利用和提供交互式卫生信息服务方面面临的一项持续挑战。设计/方法/途径考虑到卫生信息服务中的价值共创模型,开发了一种自适应优化服务资源管理策略,重点关注与用户的协作和互动。在基于物联网(IoT)的卫生信息服务系统(I-HISS)中嵌入了深度强化学习算法,通过控制服务提供和基于用户参与行为的服务适应来分配服务资源。研究结果表明,考虑到用户在服务提供过程中的共同创造,所提出的服务资源管理策略既提高了服务提供商的业务收入,也提高了用户的个人收益。原创性/价值本研究首次提出了 I-HISS 中的服务资源管理模型,在服务主导逻辑中考虑了用户的价值共创。利用深度强化学习方法开发了新型人工智能算法,以学习自适应服务资源管理策略。研究结果强调了用户在健康信息服务过程中的参与度。
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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