Title
Towards Effectively Identifying RESTful Web Services
Abstract
In recent years, RESTful Web services have been rapidly developed and deployed, because of the advantages of lightweight, flexibility and extensibility, etc. However, most RESTful services are described in heterogeneous and ordinary HTML pages, which makes them really difficult to be identified and crawled automatically from the Internet. In this paper we propose a hybrid classifier framework called co-NV for automatic identification of RESTful services on the Web. In our framework, web pages are analyzed and filtered according to the contents and structure characteristics of HTML documents, with Naïve Bayes classifier and Vector Space Model (VSM) respectively. Experiments with real RESTful services prove that our framework works effectively with high precision and recall rate, and is very practical.
Year
DOI
Venue
2014
10.1109/ICWS.2014.79
ICWS
Keywords
DocType
Citations 
naive bayes classifier,restful web services, naive bayes classifier, vector space model, service identification, html document structure,vector space model,ordinary html pages,learning (artificial intelligence),automatic identification,html documents,co-nv,restful web services,html document structure,internet,hypermedia markup languages,vsm,web services,service identification
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Yao Zhao11926219.11
Dong Li247567.20
Rongheng Lin36519.90
Danfeng Yan402.03
Jun Li526646.20