Reduction of Search Space in Restful Service Discovery

Authors

  • G. Venugopal  M.Tech Scholar, Department of Computer Science and Engineering, JNTUA College of Engineering, Ananthapuramu, Andhra Pradesh, India
  • Dr. P. Radhika Raju  Ad-hoc Assistant Professor, Department of Computer Science and Engineering, JNTUA College of Engineering, Ananthapuramu, Andhra Pradesh, India
  • Prof. A. Ananda Rao  Professor, Department of Computer Science and Engineering, JNTUA College of Engineering, Ananthapuramu, Andhra Pradesh, India

DOI:

https://doi.org//10.32628/CSEIT195430

Keywords:

Web Service, Restful Service Discovery, Semantic search, Service Classification Algorithm

Abstract

Web Services has been enabled IT services and computing technology to perform business services more efficiently and effectively. REpresentational State Transfer (REST) is to be used for creating Web APIs/services. In the existing system, web service search engines for RESTful Web Services/Api’s provide Keyword, Tag and Semantic based search functions. One of the RESTful service discovery, referred as Test-oriented RESTful service discovery with Semantic Interface Compatibility (TASSIC) have been developed by the search of RESTful Service’s/Api’s. TASSIC approach will search the semantic characteristics of search and match interface terms in the service document. An inability to consider the classification and in finding the suitable Api’s or services are a key issue of the search space in Tassic. A new approach has proposed for reduction of the search space in restful service discovery to develop a k-Nearest Neighbor classification algorithm. it provide candidate services with ranking based on semantic similarity, and classifying of similar candidate services and service unit testing will be considered. This approach is meant for increasing search precision in the retrieval and quick search for classifying their RESTful services or Api according to user-defined criteria.

References

  1. Shang-Pin Ma*, Ying-Jen Chen, Yang Syu, Hsuan-Ju Lin, and Yong-Yi Fanjiang, “Test-Oriented RESTful Service Discovery with Semantic Interface Compatibility” IEEE Transactions on Services Computing, 2018.
  2. R. T. Fielding and R. N. Taylor, "Principled design of the modern web architecture," ACM Transactions on Internet Technology, vol. 2, pp. 115--150, 2002.
  3. M. Paolucci, T. Kawamura, T. R. Payne, and K. Sycara, "Semantic matching of web services capabilities," in The Semantic Web—ISWC 2002, ed: Springer, 2002, pp. 333-347.
  4. M. Garriga, C. Mateos, A. Flores, A. Cechich, and A. Zunino, "RESTful service composition at a glance: A survey," Journal of Network and Computer Applications, vol. 60, pp. 32-53, 2016/01/01/ 2016.
  5. Alex Rodriguez, RESTful Web services, Updated February 9, 2015 - Published November 6, 2008.
  6. Reihaneh Rabbany Khorasgani Eleni Stroulia , Web service matching for RESTful web services, 2011 13th IEEE International Symposium on Web Systems Evolution (WSE), DOI 10.1109/WSE.2011.6081829.
  7. SWSF (2005). Semantic Web Services Framework (SWSF), Overview, W3C Member Submission 9 September2005,http://www.w3.org/Submission/SWSF/.
  8. Vikram Singh and Balwinder Saini, An Effective Tokenization Algorithm For Information Retrieval Systems.
  9. Ramalingam Sugumar & M.Rama Priya, Improved Performance Of Stemming Using Enhanced Porter Stemmer Algorithm For Information Retrieval,] DOI: 10.5281/zenodo.1228745.
  10.  C.Fellbaum WordNet: An Electronic Lexical Database (Language Speech and Communication) The MIT Press May 1998. 
  11. S. K. M. Wong, W. Ziarko, P. C. N. Wong, "Generalized vector space model in information retrieval," in the 8th Annual International ACM SIGIR Conference on Research and Development n Information Retrieval, New York, 1985, pp. 18-25.
  12. Lathem K. Gomadam A. P. Sheth "Sa-rest and Adding semantics to RESTful services" in ICSC IEEE Computer Society pp. 469-476 2007.
  13. Shailja Sharma1 · J. S. Lather2 · Mayank Dave3 “Semantic approach for Web service classification using machine learning and measures of semantic relatedness”.
  14. Z. Zhen, C. Shizhan, and F. Zhiyong, "Semantic Annotation for Web Services Based on DBpedia," in Service Oriented System Engineering (SOSE), 2013 IEEE 7th International Symposium on, 2013, pp. 280-285.
  15. Gabriela D. A. Guardia, Luís Ferreira Pires, Ricardo Z. N. Vêncio, A Methodology for the Development of RESTful Semantic Web Services for Gene Expression Analysis, Published: July 24, 2015, https://doi.org/10.1371/journal.pone.0134011.
  16. Cardoso J, Sheth A (2005) Introduction to semantic web services and web process composition. Semantic Web Services and Web Process Composition: 1–13.
  17. Klein, M. and A. Bernstein (2001). Searching for Services on the Semantic Web Using Process Ontologies. International Semantic Web Working Symposium (SWWS), Stanford University, California, USA.
  18. Sheth, A., C. Ramakrishnan, et al. (2005). "Semantics for the Semantic Web: The Implicit, the Formal and the Powerful." Intl. Journal on Semantic Web and Information Systems 1(1): 1-18.
  19. Shimaa E. El-Sayyad, Ahmed I. Saleh, Hesham A. Ali A new semantic web service classification (SWSC) strategy, doi.org/10.1007/s10586-018-2367-9
  20. C. Wu, E. Chang, and A. Aitken, “An empirical approach for semantic web services discovery,” in 19th Australian Conference Software Engineering, 2008.
  21. Yang Xue, Chunhong Zhang, Yang Ji, "RESTful Web Service Matching Based on WADL", Cyber-Enabled Distributed Computing and Knowledge Discovery (CyberC) 2015 International Conference on, pp. 364-371, 2015.
  22. X. Dong A. Halevy J. Madhavan E. Nemes J. Zhang "Similarity search for web services" Proceedings of the Thirtieth international conference on Very large data bases vol. 30 pp. 372-383 2004.
  23. E. Stroulia Y. Wang "Structural and semantic matching for assessing web-service similarity" International Journal of Cooperative Information Systems vol. 14 pp. 407-437 2005.
  24. W. Abramowicz K. Haniewicz M. Kaczmarek D. Zyskowski "Architecture for web services filtering and clustering" Internetand Web Applications and Services (ICIW) pp. 18 May 2007. 
  25. Martha Varguez-Moo, Francisco Moo-Mena and Victor Uc-Cetina, Use of Classification Algorithms for Semantic Web Services Discovery, doi:10.4304/jcp.8.7.1810-1814.
  26. S. Sharma, J. S. Lather, and M. Dave, "Semantic approach for Web service classification using machine learning and measures of semantic relatedness," Service Oriented Computing and Applications, vol. 10, pp. 221-231, September 01 2016.
  27. Abdelmoniem Helmy, Mervat H. Geith, An Enhanced Approach for Web Services Clustering using Supervised Machine Learning Techniques. International Journal of Scientific & Engineering Research, Volume 8, Issue 1, January-2017, ISSN 2229-5518.
  28. Vijayan, A. S., & Balasundaram, S. R. (2013, February). Effective web-service discovery using K-means clustering. In International Conference on Distributed Computing and Internet Technology (pp. 455-464). Springer Berlin Heidelberg.
  29. Venkatachalam K, Dr.S.Balakrishnan, Dr.R.Prabha, S.P.Premnath, Effective Feature Set Selection And Centroid Classifier Algorithm For Web Services Discovery, Volume 119 No. 12 2018, 1157-1172
  30. Soumi Chattopadhyay, Member, IEEE, and Ansuman Banerjee, Member, IEEE,” A New Methodology for Search Space Reduction in QoS Aware Semantic Web Service Composition”.

Downloads

Published

2019-07-30

Issue

Section

Research Articles

How to Cite

[1]
G. Venugopal, Dr. P. Radhika Raju, Prof. A. Ananda Rao, " Reduction of Search Space in Restful Service Discovery, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 5, Issue 4, pp.143-152, July-August-2019. Available at doi : https://doi.org/10.32628/CSEIT195430