Title of article :
Outlier Detection in Test Samples using Standard Deviation and Unsupervised Training Set Selection
Author/Authors :
Mohseni ، N. Department of Computer Engineering - Islamic Azad University, Babol Branch , Nematzadeh ، H. Department of Computer Engineering - Islamic Azad University, Sari Branch , Akbarib ، E. Department of Computer Engineering - Islamic Azad University, Sari Branch , Motameni ، H. Department of Computer Engineering - Islamic Azad University, Sari Branch
From page :
119
To page :
129
Abstract :
Outlier detection is a technique to identify and remove significantly different data from the more correct and consistent data in a data set. Outlier data can have negative impact on classification and clustering performance; that should be identified and removed to improve the classification efficiency. Regardless of whether a classifying technique classifies an outlier correctly, the very notion of identifying a data as outlier is of great significance. In this paper, a new approach is proposed for outlier data detection within a test data set along with unsupervised training set selection. The selected training set is used for two-step classification. After unsupervised clustering the training set, the closest cluster to a test sample is selected using the Euclidean distance measure. Then, the outlier in the test sample is identified with the concepts of standard deviation and mean value. The results showed by evaluating the distance of each sample of the test set with the new selected data set. the accuracy of the classifiers is enhanced after detection and elimination of outlier data.
Keywords :
outlier detection , training set selection , k , means , K , nearest neighbor , Standard Deviation
Journal title :
International Journal of Engineering
Journal title :
International Journal of Engineering
Record number :
2734315
Link To Document :
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