缺失值估算技术深度测量和一种提高估算效率的估算算法

S. Thirukumaran, A. Sumathi
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引用次数: 27

摘要

医学数据库中数据缺失是导致数据完整性丧失的一个问题,缺失值的解决方法是对每一个缺失值进行相关值的代入(这里数据和值的含义相同),这是代入的范围,它赋予了数据完整性。根据标题这么多的imputation技术可用。本文的目的是对各种代入技术的种类进行深入调查,并以表的形式进行分类,以技术、描述、何时使用、优点、缺点等属性进行分类,通过详细的研究,揭示出几乎不同的代入技术思想。本文通过可行性研究,提出了比聚类算法提出的其他技术更值得改进的概念,降低了医学数据库中缺失数据的输入值错误率,最大限度地完善了输入。结果阐述了在包含8个特征的786个样本数据集上降低的错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing value imputation techniques depth survey and an imputation Algorithm to improve the efficiency of imputation
Missing data in Medical database is an issue which makes lose of data integrity, solution for missing value is imputing the relevant value for every missing value(here data and value takes same meaning) it is the scope of imputation and it gives the data integrity. According to the title so many imputation Techniques available. This paper aims to describe the depth survey of types of imputation techniques and which is categorized in the form of table with the attributes like Technique, Description, when to be used, Advantages, disadvantages, Almost different imputation Techniques ideas were exposed in this paper after detailed study. After feasible study here we exposed the concept to improve the imputation technique more worthy than other techniques that Clustering imputation Algorithm proposed which reduce the error rate of imputed value for missing data into Medical database and makes the imputation perfect to the maximum level. And the results elaborates the reduced error rate for dataset of 786 samples with 8 features.
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