Modified K-Nearest Neighbour Using Proposed Similarity Fuzzy Measure for Missing Data Imputation on Medical Datasets (MKNNMBI)

B. Bai, N. Mangathayaru, B. Rani
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引用次数: 0

Abstract

Early disease diagnosis is a burning problem in health sector, medical domain and disease management. During analysis, quality of the data can be achieved only if the data is complete. Missing values reduces the efficiency of data analysis task. Researchers proposed various imputation methods but always there was a need for a better imputation method. This paper objective is to propose a method for imputation using proposed similarity fuzzy measure through which we can impute missing values by finding k similar instances called as Modified k-Nearest Neighbour for imputation of missing data (MKNNMBI). The proposed imputation method outperformed when compared with other existing imputation methods MV EM, MV BPCA, MV Ignore, MV KMeans, MV FKMeans, MV KNN, MV MC, MV WKNNimpute, MV SVDimpute, MV SVMimpute, CBC-IM-FUZZY. These imputation methods were studied on different benchmark datasets and tested for performance on different classifiers like C4.5, SVM, kNN, NB and found that the proposed method leads to accurate imputation and improves the accuracy.
基于相似度模糊测度的改进k近邻医疗数据缺失数据补全
疾病早期诊断是卫生部门、医学领域和疾病管理领域亟待解决的问题。在分析过程中,只有数据完整才能保证数据的质量。缺失值会降低数据分析任务的效率。研究者提出了各种各样的归算方法,但总是需要一种更好的归算方法。本文的目的是提出一种使用所提出的相似性模糊测度的方法,通过该方法我们可以通过寻找k个相似的实例来推算缺失值,称为修正的k近邻用于缺失数据的推算(MKNNMBI)。与现有的几种插值方法(MV EM、MV BPCA、MV Ignore、MV KMeans、MV FKMeans、MV KNN、MV MC、MV WKNNimpute、MV SVDimpute、MV SVMimpute、CBC-IM-FUZZY)相比,该方法具有较好的效果。在不同的基准数据集上对这些方法进行了研究,并在C4.5、SVM、kNN、NB等不同的分类器上进行了性能测试,结果表明,本文提出的方法可以实现准确的插补,提高了准确率。
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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