Big Data Analytics for Healthcare Recommendation Systems

M. Lambay, S. Pakkir Mohideen
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引用次数: 6

Abstract

Healthcare industry is an indispensable entity in the real world where large volumes of data is accumulated from time to time. Such data assumes characteristics of big data and it is desirable to analyze it and bring about latent relationships among variables in the healthcare data. Data in healthcare industry is rich in useful information. However, a comprehensive big data approach is essential to mine the data and acquire business intelligence. There are many use cases of big data analytics. However, in healthcare industry it is imperative to have knowledge-driven recommendations that help all stakeholders. With the emergence of cloud computing, big data analytics has become a reality. Distributed programming frameworks like Hadoop and Spark, to mention few, are available with associated Distributed File System (DFS) to manage big data. Many researchers contributed towards developing algorithms based on machine learning which is part of Artificial Intelligence (AI). Since healthcare industry is one of the sources of big data, it needs distributed environments for processing. Big data analytics is essential to analyze healthcare data in a comprehensive manner. The cloud computing and big data ecosystem is playing favorable role in realizing big data analytics for healthcare recommendations. A typical recommender system in healthcare industry is supposed to produce recommendations in various aspects of the domain. This paper throws light into different recommenders in healthcare domain that use big data analytics to generate recommendations. It not only provides useful insights but also discussed research gaps that can be used to investigate further to improve the state of the art.
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医疗保健推荐系统的大数据分析
医疗保健行业是现实世界中不可缺少的一个实体,它会不断积累大量数据。这些数据具有大数据的特征,需要对其进行分析,得出医疗数据中变量之间的潜在关系。医疗保健行业的数据中蕴含着丰富的有用信息。然而,全面的大数据方法对于挖掘数据和获取商业智能至关重要。大数据分析有很多用例。然而,在医疗保健行业,必须有知识驱动的建议,以帮助所有利益相关者。随着云计算的出现,大数据分析已经成为现实。像Hadoop和Spark这样的分布式编程框架,仅举几例,可以与相关的分布式文件系统(DFS)一起使用来管理大数据。许多研究人员致力于开发基于机器学习的算法,这是人工智能(AI)的一部分。医疗保健行业是大数据的来源之一,需要分布式环境进行处理。大数据分析对于全面分析医疗数据至关重要。云计算和大数据生态系统正在为实现医疗建议大数据分析发挥有利作用。一个典型的医疗保健行业推荐系统应该在该领域的各个方面产生推荐。本文介绍了医疗保健领域使用大数据分析生成推荐的不同推荐器。它不仅提供了有用的见解,而且还讨论了可用于进一步调查以改善艺术状态的研究差距。
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