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Modified adaptive neuro-fuzzy inference system (M-ANFIS) based multi-disease analysis of healthcare Big Data

机译:基于修饰的自适应神经模糊推理系统(M-ANFIS)的医疗保健大数据的多疾病分析

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摘要

Big Data (BD) has turned into a significant research field owing to the dawn of vast quantity of data generated as of various sources like Internet of things (IoT), social media, and also multimedia applications. BD has played an imperative part in numerous decision-makings as well as forecasting domains for instance health care, recommendation systems, web display advertisement, transportation, clinicians, business analysis, and fraud detection along with tourism marketing. The domain of health care attained its influence by the effect of BD since the data sources concerned in the healthcare organizations are famous for their volume, heterogeneous complexity, and high dynamism. Though the function of BD analytical techniques, platforms, and tools are realized among various domains, their effect on healthcare organization for possible healthcare applications shows propitious research directions. This paper concentrates on the analysis of multiple diseases using modified adaptive neuro-fuzzy inference system (M-ANFIS). Initially, the healthcare BD undergoes pre-processing. In the pre-processing step, data format identification and integration of the healthcare BD dataset is done. Now, features are extracted from the preprocessed dataset and the count of the closed frequent item set (CFI) is found. Then, the entropy of the CFI count is determined. Finally, analyses of the multiple diseases are executed with the aid of M-ANFIS. In M-ANFIS, k-medoid clustering is used to cluster the CFI entropy of healthcare BD. The proposed method's performance is assessed by comparing it with the other existent techniques.
机译:由于诸如各种来源(IOT),社交媒体和多媒体应用程序等各种来源产生的大量数据的曙光,大数据(BD)已经变成了一个重要的研究领域。 BD在许多决策中发挥了一部分,以及预测域,例如医疗保健,推荐系统,网络展示广告,运输,临床医生,业务分析以及旅游营销的欺诈检测。由于医疗组织中有关的数据来源以其体积,异质复杂性和高活力而闻名,因此衡量了卫生保健领域的影响。虽然在各个领域中实现了BD分析技术,平台和工具的功能,但它们对可能的医疗保健组织的影响可能会显示有利的研究方向。本文浓缩了使用改进的自适应神经模糊推理系统(M-ANFIS)的多种疾病的分析。最初,医疗保健BD经历预处理。在预处理步骤中,完成了数据格式标识和保健BD数据集的集成。现在,从预处理数据集中提取功能,找到封闭式频繁项目集(CFI)的计数。然后,确定CFI计数的熵。最后,借助M-ANFIS执行多种疾病的分析。在M-ANFIS中,K-MEDOID聚类用于聚类HealthCare BD的CFI熵。通过将其与其他存在的技术进行比较来评估所提出的方法的性能。

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