Experimental analysis of Medicare data using hierarchical grouping mechanism

IF 0.8 Q4 ROBOTICS
P. Jyothi, D. Lakshmi, Rama Rao Kvsn
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引用次数: 1

Abstract

Purpose Analyzing medicare data is a role undertaken by the government and commercial companies for accepting the appeals and sanctioning the claims of those insured under Medicare. As the data of medicare is robust and made up of heterogeneous typed columns, traditional approaches consist of a laborious and time-consuming process. The understanding and processing of such data sets and finding the role of each attribute for data analysis are tricky tasks which this research will attempt to ease. The paper aims to discuss these issues. Design/methodology/approach This paper proposes a Hierarchical Grouping (HG) with an experimental model to handle the complex data and analysis of the categorical data which consist of heterogeneous typed columns. The HG methodology starts with feature subset selection. HG forms a structure by quantitatively estimating the similarities and forms groups of the features for data. This is carried by applying metrics like decomposition; it splits the dataset and helps to analyze thoroughly under different labels with different selected attributes of Medicare data. The method of fixed regression includes metrics of re-indexing and grouping which works well for multiple keys (multi-index) of categorical data. The final stage of structure is applying multiple aggregation function on each attribute for quantitative computation. Findings The data are analyzed quantitatively with the HG mechanism. The results shown in this paper took less computation cost and speed, which are usually incurred on the publicly available data sets. Practical implications The motive of this paper is to provide a supportive work for the tasks like outlier detection, prediction, decision making and prescriptive tasks for multi-dimensional data. Originality/value It provides a new efficient approach to analyze medicare data sets.
基于分层分组机制的医疗保险数据实验分析
目的分析医疗保险数据是政府和商业公司在接受上诉和批准医疗保险参保者索赔方面所承担的职责。由于医疗保险的数据是稳健的,并且由异构类型的列组成,因此传统的方法是一个耗时费力的过程。对这些数据集的理解和处理,以及找到每个属性在数据分析中的作用,都是本研究将试图解决的棘手任务。本文旨在讨论这些问题。设计/方法论/方法本文提出了一种具有实验模型的分层分组(HG),用于处理复杂数据和分析由异构类型列组成的分类数据。HG方法论从特征子集选择开始。HG通过定量估计相似性来形成结构,并形成数据的特征组。这是通过应用诸如分解之类的度量来实现的;它对数据集进行拆分,并有助于在不同标签下对医疗保险数据的不同选定属性进行彻底分析。固定回归方法包括重新索引和分组的度量,这对分类数据的多个键(多索引)很有效。结构的最后阶段是对每个属性应用多重聚合函数进行定量计算。结果用HG机制对数据进行了定量分析。本文所示的结果占用了较少的计算成本和速度,而这些成本和速度通常是在公开可用的数据集上产生的。实际意义本文的动机是为多维数据的异常值检测、预测、决策和规定性任务提供支持。独创性/价值它为分析医疗保险数据集提供了一种新的有效方法。
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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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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