Classical methods for detecting outliers deal with continuous variables. These methods are not readily applicable to categorical data, such as incorrect/correct scores (0/1) and ordered rating scale scores (e.g., 0; : : : ; 4) typical of multi-item tests and questionnaires. This study proposes two definitions of outlier scores suited for categorical data. One definition combines information on outliers from scores on all the items in the test, and the other definition combines information from all pairs of item scores. For a particular item-score vector, an outlier score expresses the degree to which the item-score vector is unusual. For ten real-data sets, the distribution of each of the two outlier scores is inspected by means of Tukey’s ...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
As said in signal processing, "One person's noise is another person's signal." F...
Outlier detection or anomaly detection is a very important process to detect instances with unexpect...
The sensitivity and the specificity of four outlier scores were studied for four different discordan...
An Outlier is a data point which is significantly different from the remaining data points. Outlier ...
This article is focused on the automatic detection of the corrupted or inappropriate responses in qu...
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
Most real-world data sets contain outliers that have unusually large or small values when compared w...
An outlier is an observation that appears to deviate markedly from other observations in the sample ...
Outlier analysis is that the user do depends on the kinds data they have. An outlier is a data value...
This paper concerns itself with the methods of identifying outliers in an otherwise normally distrib...
Data Mining just alludes to the extraction of exceptionally intriguing patterns of the data from the...
The need to test for "outliers" is often overlooked both in statistical analyses of data, and in app...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
There has been much debate in the literature regarding what to do with extreme or influential data p...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
As said in signal processing, "One person's noise is another person's signal." F...
Outlier detection or anomaly detection is a very important process to detect instances with unexpect...
The sensitivity and the specificity of four outlier scores were studied for four different discordan...
An Outlier is a data point which is significantly different from the remaining data points. Outlier ...
This article is focused on the automatic detection of the corrupted or inappropriate responses in qu...
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
Most real-world data sets contain outliers that have unusually large or small values when compared w...
An outlier is an observation that appears to deviate markedly from other observations in the sample ...
Outlier analysis is that the user do depends on the kinds data they have. An outlier is a data value...
This paper concerns itself with the methods of identifying outliers in an otherwise normally distrib...
Data Mining just alludes to the extraction of exceptionally intriguing patterns of the data from the...
The need to test for "outliers" is often overlooked both in statistical analyses of data, and in app...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
There has been much debate in the literature regarding what to do with extreme or influential data p...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
As said in signal processing, "One person's noise is another person's signal." F...
Outlier detection or anomaly detection is a very important process to detect instances with unexpect...