Academic Journals Database
Disseminating quality controlled scientific knowledge

Outlier Detection Scoring Measurements Based on Frequent Pattern Technique

ADD TO MY LIST
 
Author(s): Aiman Moyaid Said | Dhanapal Durai Dominic | Brahim Belhaouari Samir

Journal: Research Journal of Applied Sciences, Engineering and Technology
ISSN 2040-7459

Volume: 6;
Issue: 8;
Start page: 1341;
Date: 2013;
Original page

Keywords: Anomaly | frequent pattern mining | outlier detection | outlier measurement

ABSTRACT
Outlier detection is one of the main data mining tasks. The outliers in data are more significant and interesting than common ones in a wide variety of application domains, such as fraud detection, intrusion detection, ecosystem disturbances and many others. Recently, a new trend for detecting the outlier by discovering frequent patterns (or frequent item sets) from the data set has been studied. In this study, we present a summarization and comparative study of the available outlier detection scoring measurements which are based on the frequent patterns discovery. The comparisons of the outlier detection scoring measurements are based on the detection effectiveness. The results of the comparison prove that this approach of outlier detection is a promising approach to be utilized in different domain applications.
Why do you need a reservation system?      Save time & money - Smart Internet Solutions