DocumentCode :
167156
Title :
Handling Missing Data Problems with Sampling Methods
Author :
Houari, Rima ; Bounceur, Ahcene ; Tari, A. Kamel ; Kecha, M. Tahar
fYear :
2014
fDate :
17-19 June 2014
Firstpage :
99
Lastpage :
104
Abstract :
Missing data cases are a problem in all types of statistical analyses and arise in almost all application domains. Several schemes have been studied in this paper to overcome the drawbacks produced by missing values in data mining tasks, one of the most well known is based on pre processing, formerly known as imputation. In this work, we propose a new multiple imputation approach based on sampling techniques to handle missing values problems, in order to improving the quality and efficiency of data mining process. The proposed method is favourably compared with some imputation techniques and outperforms the existing approaches using an experimental benchmark on a large scale, waveform dataset taken from machine learning repository and different rate of missing values (till 95%).
Keywords :
data handling; data mining; sampling methods; data mining process; large scale waveform dataset; missing data problem handling; multiple imputation approach; sampling techniques; statistical analysis; Correlation; Data mining; Data models; Databases; Density functional theory; Joints; Mathematical model; Copula; Data Pre-Processing; Data mining; Missing values; Multidimensional Sampling;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Advanced Networking Distributed Systems and Applications (INDS), 2014 International Conference on
Conference_Location :
Bejaia
Type :
conf
DOI :
10.1109/INDS.2014.25
Filename :
6969065
Link To Document :
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