In data analysis, outliers are deviating and unexpected observations. Outlier detection is important, because outliers can contain critical and interesting information. We propose an approach for optimizing outlier detection ensembles using a limited number of outlier examples. In our work, a limited number of outlier examples are defined as from 1 to 10% of the available outliers. The optimized outlier detection ensembles consist of outlier detection algorithms, which provide an outlier score and utilize adjustable parameters. The automatic optimization determines the parameter values, which enhance the discrimination of inliers and outliers. This increases the efficiency of the outlier detection. Outliers are rare by definition, which mak...
This master thesis aims at proposing a solution to improve the current outlier detection method used...
Outlier detection and ensemble learning are well established re-search directions in data mining yet...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
In data analysis, outliers are deviating and unexpected observations. Outlier detection is important...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Ensembles for unsupervised outlier detection is an emerging topic that has been neglected for a surp...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Ensembles for unsupervised outlier detection is an emerging topic that has been neglected for a surp...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
Outlier detection and ensemble learning are well established research directions in data mining yet...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
This master thesis aims at proposing a solution to improve the current outlier detection method used...
Outlier detection and ensemble learning are well established re-search directions in data mining yet...
A familiar problem in machine learning is to determine which data points are outliers when the unde...
In data analysis, outliers are deviating and unexpected observations. Outlier detection is important...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Ensembles for unsupervised outlier detection is an emerging topic that has been neglected for a surp...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Ensembles for unsupervised outlier detection is an emerging topic that has been neglected for a surp...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
Outlier detection and ensemble learning are well established research directions in data mining yet...
Outlier detection and ensemble learning are well established research directions in data mining yet ...
This master thesis aims at proposing a solution to improve the current outlier detection method used...
Outlier detection and ensemble learning are well established re-search directions in data mining yet...
A familiar problem in machine learning is to determine which data points are outliers when the unde...