Title :
Analysis and evaluation of outlier detection algorithms in data streams
Author :
Madhu Shukla;Y. P. Kosta;Prashant Chauhan
Author_Institution :
Marwadi Education Foundation, Rajkot, India
Abstract :
Data mining is one of the most exciting fields of research for the researcher. As data is getting digitized, systems are getting connected and integrated, scope of data generation and analytics has increased exponentially. Today, most of the systems generate non-stationary data of huge, size, volume, occurrence speed, fast changing etc. these kinds of data are called data streams. One of the most recent trend i.e. IOT (Internet Of Things) is also promising lots of expectation of people which will ease the use of day to day activities and it could also connect systems and people together. This situation will also lead to generation of data streams, thus present and future scope of data stream mining is highly promising. Characteristics of data stream possess many challenges for the researcher; this makes analytics of such data difficult and also acts as source of inspiration for researcher. Outlier detection plays important role in any application. In this paper we reviewed different techniques of outlier detection for stream data and their issues in detail and presented results of the same.
Keywords :
"Data mining","Clustering algorithms","Spatial databases","Algorithm design and analysis"
Conference_Titel :
Computer, Communication and Control (IC4), 2015 International Conference on
DOI :
10.1109/IC4.2015.7375696