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The Effects of Missing Data Characteristics on the Choice of Imputation Techniques

机译:缺少数据特征对估算技术选择的影响

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One major characteristic of data is completeness. Missing data is a significant problem in medical datasets. It leads to incorrect classification of patients and is dangerous to the health management of patients. Many factors lead to the missingness of values in databases in medical datasets. In this paper, we propose the need to examine the causes of missing data in a medical dataset to ensure that the right imputation method is used in solving the problem. The mechanism of missingness in datasets was studied to know the missing pattern of datasets and determine a suitable imputation technique to generate complete datasets. The pattern shows that the missingness of the dataset used in this study is not a monotone missing pattern. Also, single imputation techniques underestimate variance and ignore relationships among the variables; therefore, we used multiple imputations technique that runs in five iterations for the imputation of each missing value. The whole missing values in the dataset were 100% regenerated. The imputed datasets were validated using an extreme learning machine (ELM) classifier. The results show improvement in the accuracy of the imputed datasets. The work can, however, be extended to compare the accuracy of the imputed datasets with the original dataset with different classifiers like support vector machine (SVM), radial basis function (RBF), and ELMs.
机译:数据的一个主要特征是完整性。缺少的数据是医疗数据集中的重大问题。它导致患者的不正确分类,对患者的健康管理是危险的。许多因素导致医疗数据集中数据库中的值遗失。在本文中,我们建议需要检查医疗数据集中缺失数据的原因,以确保在解决问题时使用右估算方法。研究了数据集中缺失机制,以了解数据集的缺失模式,并确定生成完整数据集的合适的归纳技术。该模式表明,本研究中使用的数据集的缺失不是单调丢失的模式。此外,单个估算技术低估方差并忽略变量之间的关系;因此,我们使用了多种避免技术,该技术在五个迭代中运行,用于每个缺失值的归纳。数据集中的整个缺失值为100%重新生成。使用极端学习机(ELM)分类器验证算书数据集。结果表明了避障数据集的准确性的提高。但是,该工作可以扩展,以将所需数据集的准确性与原始数据集进行比较,其具有支持向量机(SVM),径向基函数(RBF)和ELM等不同的分类器。

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