优化医疗CRM营销系统推荐引擎

R. Marcu, D. Popescu, I. Danila
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引用次数: 2

摘要

医疗保健营销是最有趣的研究领域之一,因为一方面医疗数据的高度复杂性和法律法规,另一方面营销过程所需的大量数据。目前的研究提出了一种适应常用营销流程的解决方案,建议医疗保健行业需要医疗保健行业。由于医疗保健系统中有大量可用数据,并且需要分析完整的可用数据集,因此标准推荐流程的优化已被确定为适应的主要点。缓存结果是软件实现中最常用的优化技术之一,但由于医疗数据的高度敏感性,它似乎并不适用。本文利用数据集的分割,将目标组中的患者概况作为输入数据传递给推荐场景,从而为医疗保健推荐场景捕获结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimize Recommendation Engine for Marketing System in Healthcare CRM
Healthcare marketing is one of the most interesting research domains due to the high complexity and legal regulations of the medical data on the one side and the large volume of data required by marketing processes on the other side. Current research proposes a solution of adapting a commonly used marketing process, recommendation to healthcare industry needs to healthcare industry. Optimization of the standard recommendation processes have been identified as the main point of adaptation due to the high volume of data available in healthcare systems along with the need of analyzing the complete set of available data. Caching results represents one of the most common optimization techniques used in software implementation and due to highly sensitivity of medical data appears to be non-applicable. This paper is making use of segmentation of data sets combining patient profiles in target groups that are to be passed to recommendation scenarios as input data allowing catching results for healthcare recommendation scenarios.
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