Title
Web Service Based Feature Selection and Discretization with Efficiency
Abstract
Web service is an emerging technology that enables the users to access heterogeneous, distributed resources, providing easier integration and interoperability between data and its applications. Big data analysis is the one of the major problems in web based machine learning and data mining. Big data contain high degree of irrelevant and redundant information's which are greatly degrades the performance of learning algorithms. Therefore, feature selection becomes necessary for machine learning tasks for facing high dimensional data. Discretization turns continuous attributes into discrete ones by dividing the values into small number of intervals. In this paper, a new web service based feature selection and discretization method called NANO is presented. The proposed web service method was tested with reputed datasets, it shows high classification accuracy and improves the computation efficiency.
Year
DOI
Venue
2012
10.1109/ICSC.2012.51
ICSC
Keywords
Field
DocType
feature selection,high degree,proposed web service method,data mining,web service,big data analysis,new web service,high dimensional data,high classification accuracy,big data,feature extraction,soap,web services,semantics,soa,service oriented architecture,data analysis,classification,uddi,data integration,open systems,learning artificial intelligence
Data integration,Discretization,Data mining,Feature selection,Computer science,Feature extraction,Web modeling,Web application,Web service,Service-oriented architecture
Conference
Citations 
PageRank 
References 
0
0.34
19
Authors
4
Name
Order
Citations
PageRank
J. Senthilkumar1216.28
S. Karthikeyan2396.42
D. Manjula300.68
R. Krishnamoorthy400.34