A Study on ML Algorithms for Big Data Analytics in the field of Medical Reasoning

B. Ramyanjali, R. Agarwal
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Abstract

Machine learning for healthcare is the future technology. Big Data Analytics is one of the recent technological developments as it assures to provide better information from the big data resources. It incorporates selecting the suitable Big Data stockpiling and determines the structure extended by MLstrategies. In this digital era, a lot of information is available on public domain, which is further gathered by machine learning to help treat and analyse patients' medical condition. There are several interesting developments whereby medical experts are good at interpreting the data that they see and the information that they get from models, and on the other side, machine learning algorithms are used. These algorithms do not require any medical expertise guidance but can very effectively extract patterns. As a result, the focus of this study is on how the combination of human experience and trained machine learning algorithm models may be used to yield various research insights in the field of healthcare. This research study focuses on and represents unique ML computations in BDAthat are useful in the field of Health Care Analytics.
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医学推理领域大数据分析的ML算法研究
医疗保健领域的机器学习是未来的技术。大数据分析是最近的技术发展之一,因为它保证了从大数据资源中提供更好的信息。它包括选择合适的大数据存储和确定mlstrategy扩展的结构。在这个数字时代,大量的信息可以在公共领域获得,这些信息通过机器学习进一步收集,以帮助治疗和分析患者的医疗状况。有几个有趣的发展,医学专家擅长解释他们看到的数据和他们从模型中得到的信息,另一方面,机器学习算法被使用。这些算法不需要任何医学专业知识的指导,但可以非常有效地提取模式。因此,本研究的重点是如何将人类经验和训练有素的机器学习算法模型相结合,以产生医疗保健领域的各种研究见解。本研究关注并代表了bda中独特的ML计算,这些计算在医疗保健分析领域非常有用。
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