Web Service Ranking and Recommendation Using User History and Profile

Ms. Ashwini Chavhan, Mrs. Ranjana Badre

Abstract


Web service is an internet communication mechanism of electronic processing. Various applications interact with
each other to share data and services with the help of web
services. The idea behind Web services is to make it as a practical
tool to utilize the Internet as a visual tool. Web service fulfils both
users non-functional and functional needs. Because of increase in
the availability of web services, it is difficult to select appropriate
candidates to serve the people in a huge number of web services.
Hence, to rank and choose web services we have presented web
service ranking approach using rank aggregation method by
exploring user behavior. The users history of invocation is used
to estimate the user behavior. There are different approaches for
the web service ranking first approach is considering Functional
relevance and QoS parameter for ranking then the second
approach is considering CF based score and QoS for ranking and
third is considered all three parameters QoS utility, Functional
relevance (FR), CF score for ranking. Response time, throughput
and availability are considered as a service quality parameter.
The user gets the recommendation of web services from other
profile based similar users.We are also recommending nearest
bookstores list by considering geographical location of a user.

Full Text:

PDF

References


Q. Zhang, C. Ding and C. H. Chi, ”Collaborative Filtering Based

Service Ranking Using Invocation Histories,” 2011 IEEE International

Conference on Web Services, Washington, DC, 2011, pp. 195-202.

G. Kang, M. Tang, J. Liu, X. (. Liu and B. Cao, ”Diversifying Web

Service Recommendation Results via Exploring Service Usage History,”

in IEEE Transactions on Services Computing, vol. 9, no. 4, pp. 566-579,

Y. Hu, Q. Peng, X. Hu and R. Yang, ”Time Aware and Data Sparsity

Tolerant Web Service Recommendation Based on Improved Collaborative

Filtering,” in IEEE Transactions on Services Computing, vol. 8, no. 5,

pp. 782-794, Sept.-Oct. 1 2015.

A. Birukou, E. Blanzieri, V. DAndrea, P. Giorgini and N. Kokash,

”Improving Web Service Discovery with Usage Data,” in IEEE Software,

vol. 24, no. 6, pp. 47-54, Nov.-Dec. 2007.

G. Kang, J. Liu, M. Tang and Y. Xu, ”An Effective Dynamic Web Service

Selection Strategy with Global Optimal QoS Based on Particle Swarm

Optimization Algorithm,” 2012 IEEE 26th International Parallel and

Distributed Processing Symposium Workshops PhD Forum, Shanghai,

, pp. 2280-2285

G. Kang, J. Liu, M. Tang, X. Liu and K. K. Fletcher, ”Web Service Selection for Resolving Conflicting Service Requests,” 2011 IEEE International

Conference on Web Services, Washington, DC, 2011, pp. 387-394.

N. Hiratsuka, F. Ishikawa and S. Honiden, ”Service Selection with

Combinational Use of Functionally-Equivalent Services,” 2011 IEEE

International Conference on Web Services, Washington, DC, 2011, pp.

-104.

D. Wanchun, L. Chao, Z. Xuyun and J. Chen, ”A QoS-Aware Service

Evaluation Method for Co-selecting a Shared Service,” 2011 IEEE

International Conference on Web Services, Washington, DC, 2011, pp.

-152.

P. Singh, N. Jain and A. Maini, ”Investigating the effect of feature

selection and dimensionality reduction on phishing website classification

problem,” 2015 1st International Conference on Next Generation Computing Technologies (NGCT), Dehradun, 2015, pp. 388-393.

L. Yao, Q. Z. Sheng, A. Segev and J. Yu, ”Recommending Web Services

via Combining Collaborative Filtering with Content-Based Features,”

IEEE 20th International Conference on Web Services, Santa Clara,

CA, 2013, pp. 42-49.

G. Kang, J. Liu, M. Tang, B. Cao and Y. Xu, ”An Effective Web Service

Ranking Method via Exploring User Behavior,” in IEEE Transactions on

Network and Service Management, vol. 12, no. 4, pp. 554-564, Dec.

Z. Zheng, H. Ma, M. R. Lyu and I. King, ”QoS-Aware Web Service

Recommendation by Collaborative Filtering,” in IEEE Transactions on

Services Computing, vol. 4, no. 2, pp. 140-152, April-June 2011.

L. Yao, Q. Z. Sheng, A. H. H. Ngu, J. Yu and A. Segev, ”Unified

Collaborative and Content-Based Web Service Recommendation,” in

IEEE Transactions on Services Computing, vol. 8, no. 3, pp. 453-466,

May-June 1 2015.

Y. Zhang, Z. Zheng and M. R. Lyu, ”WSExpress: A QoS-aware Search

Engine for Web Services,” 2010 IEEE International Conference on Web

Services, Miami, FL, 2010, pp. 91-98.

H. R. Jo, K. W. Park, J. I. Kim and D. H. Lee, ”A Semantic Category

Recommendation System Exploiting LDA Clustering Algorithm and

Social Folksonomy,” 2015 IEEE 39th Annual Computer Software and

Applications Conference, Taichung, 2015, pp. 644-645.

Y. Jiang, J. Liu, M. Tang and X. Liu, ”An Effective Web Service

Recommendation Method Based on Personalized Collaborative Filtering,”

IEEE International Conference on Web Services, Washington, DC,

, pp. 211-218.

S. S. Yau and Y. Yin, ”QoS-Based Service Ranking and Selection for

Service-Based Systems,” 2011 IEEE International Conference on Services

Computing, Washington, DC, 2011, pp. 56-63.




 

Copyright © IJETT, International Journal on Emerging Trends in Technology