Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Analysis of Clustering Algorithm for Outlier Detection in Data Stream


Affiliations
1 Department of C.E, Darshan Engineering College, GTU, Rajkot, India
     

   Subscribe/Renew Journal


Outlier detection is an important data mining task, aiming at the discovery of elements that show significant diversion from the expected behavior. Data stream mining has poses different challenges for outlier detection like concept drift, huge size and evolutionary data from data streams. Clustering techniques for data stream which helps to create a similar group of data are used to cluster the similar data items in data streams and also used to detect the outliers from data stream, so they are called as cluster based outlier detection. Which provides advantages like less memory requirement, less time consumption and it results exact outliers. In data streams if an object does not obey the behavior of normal data object is called as outlier. We proposed a new framework for outlier detection in data streams, which is combination of Neighbour based outlier detection approach and clustering based approach for outlier detection in data streams which provides better output in terms of true outliers from data streams.


Keywords

Application Area of Outlier Detection, Data Stream, K-Means Algorithm, Outlier Detection Algorithm in Data Stream.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 208

PDF Views: 3




  • Analysis of Clustering Algorithm for Outlier Detection in Data Stream

Abstract Views: 208  |  PDF Views: 3

Authors

H. P. Jani
Department of C.E, Darshan Engineering College, GTU, Rajkot, India
I. K. Rajani
Department of C.E, Darshan Engineering College, GTU, Rajkot, India

Abstract


Outlier detection is an important data mining task, aiming at the discovery of elements that show significant diversion from the expected behavior. Data stream mining has poses different challenges for outlier detection like concept drift, huge size and evolutionary data from data streams. Clustering techniques for data stream which helps to create a similar group of data are used to cluster the similar data items in data streams and also used to detect the outliers from data stream, so they are called as cluster based outlier detection. Which provides advantages like less memory requirement, less time consumption and it results exact outliers. In data streams if an object does not obey the behavior of normal data object is called as outlier. We proposed a new framework for outlier detection in data streams, which is combination of Neighbour based outlier detection approach and clustering based approach for outlier detection in data streams which provides better output in terms of true outliers from data streams.


Keywords


Application Area of Outlier Detection, Data Stream, K-Means Algorithm, Outlier Detection Algorithm in Data Stream.