|Table of Contents|

Web Service Composition Discovery Based on Group Role Collaboration Service Aggregation(PDF)

《南京师大学报(自然科学版)》[ISSN:1001-4616/CN:32-1239/N]

Issue:
2024年04期
Page:
135-147
Research Field:
计算机科学与技术
Publishing date:

Info

Title:
Web Service Composition Discovery Based on Group Role Collaboration Service Aggregation
Author(s):
Huang Li1Zhao Lu2
(1.School of Information Engineering,Jiangsu Open University,Nanjing 210017,China)
(2.School of Computer Science and Technology,Nanjing University of Posts and Telecommunications,Nanjing 210023,China)
Keywords:
crowd-based cooperationservice aggregationgroup rolegroup performanceservice computing
PACS:
TP393
DOI:
10.3969/j.issn.1001-4616.2024.04.015
Abstract:
Towards two-objective constraint optimization problem for group performance and interaction cost,a service aggregation method based on Group Role Collaboration(GRC)is designed. Considering the collaboration performance and interaction cost among group members,an interaction cost calculation method is proposed. To resolve the problem of group role assignment,especially the “role” profile,group collaborative based semantic information is introduced to enrich the semantic description of services. A hierarchical clustering algorithm combining structure and semantic information is used to search for service candidate roles. It could improve the quality of service aggregation and resolve the dual objective constraint optimization between group performance and interaction cost. Experiments show that this method has obvious optimization effect on service aggregation in terms of satisfying service behavior compatibility and functional reliability.

References:

[1]TAN W,ZHAO Y,HU X,et al. A method towards web service conbination for cross-organisational business process using qos and cluster[J]. Enterprise information systems,2019,13(5):631-649.
[2]ZHAO Y,TAN W,JIN T. Qos-aware web service composition considering the constraints between services[C]//In Proceedings of the 12th Chinese Conference on Computer Supported Cooperative Work and Social Computing. Chongqing,2017:229-232.
[3]IBRAHIM G J,RASHID T A,AKINSOLU M O. An energy efcient service composition mechanism using a hybrid meta-heuristic algorithm in a mobile cloud environment[J]. Journal parallel and distributed computing,2020,143:77-87.
[4]HOSSEINZADEH M,HAMA H K,GHAFOUR M Y,et al. Service selection using multi-criteria decision making:a comprehensive overview[J]. Journal of network system manage,2020,28:1639-1693.
[5]DASTJERDI A V,BUYYA R. Compatibility-aware cloud service composition under fuzzy preferences of users[J]. IEEE transactions on cloud computing,2014,2(1):1-13.
[6]ASGHARI S,NAVIMIPOUR N J. Review and comparison of meta-heuristic algorithms for service composition in cloud computing[J]. Journal of multimedia processing,2016,4(4):28-34.
[7]VAKILI A,NAVIMIPOUR N J. Comprehensive and systematic review of the service composition mechanisms in the cloud environments[J]. Journal of network and computer application,2017,81:24-36.
[8]ZHAO Y,QU Y,CHEN F,et al. Data integrity verifcation in mobile edge computing with multi-vendor and multi-server[J]. IEEE transactions on mobile computing,2023,23(5):5418-5432.
[9]ZHAO Y,QU Y,XIANG Y,et al. Longterm over one-of:Heterogeneity-oriented dynamic verifcation assignment for edge data integrity[J]. IEEE transactions on mobile computing,2024,23(5):4601-4616.
[10]GAO T L,DUAN L,FENG L F,et al. A novel blockchain-based responsible recommendation system for service process creation and recommendation[J]. ACM transactions on intelligent systems and technology,2024,15(4):1-24. DOI 10.1145/3643858.
[11]ZHU Q L,FAN Y L,WANG S G. A fairness aware service recommendation method in service ecosystem[J]. International journal of web and grid services,2023,19(4):427-445.
[12]ZHANG F,CHEN B M,LIU C. Web service instant recommendation for sustainable service mashup[J]. Sustainability,2020,12(20):8563. DOI 10.3390/su12208563.
[13]YU D J,YU T,WANG D J,et al. Long tail service recommendation based on cross-view and contrastive learning[J]. Expert systems with applications,2024,238:121957. DOI 10.1016/j.eswa.2023.121957.
[14]ZHU H. Role-based collaboration and E-CARGO:revisiting the developments of the last decade[J]. IEEE systems,man,and cybernetics magazine,2015,1(3):27-36.
[15]滕少华,张红,刘冬宁,等. E-CARGO模型在CSP问题中的描述[J]. 计算机科学,2015,42(2):241-246.
[16]ZHANG M,YAN G,WANG Y,et al. Identifying vital nodes in social networks using an evidential methodology combining with high-order analysis[J]. International conference of pioneering computer scientists,engineers and educators,2020(1):110-117.
[17]MAHYAR H,HASHEMINEZHAD R,GHALEBI E,et al. Identifying central nodes for information flow in social networks using compressive sensing[J]. Social network analysis & mining,2018,8(33):1-24.
[18]BOULMAKOUL A,BESRI Z. Scoping enterprise organizational structure through topology foundation and social network analysis[C]//3rd Edition on Innovation and News Trends in Information Systems,Tanger,Morocco,2013.
[19]HUANG L,TAN W,SUN Y. Collaborative recommendation algorithm based on probabilistic matrix factorization in probabilistic latent semantic analysis[J]. Multimedia tools and applications,2019,78:8711-8722.
[20]HAO Y S,FAN Y S,ZHANG J. Service recommendation based on description reconstruction in cloud manufacturing[J]. International journal of computer integrated manufacturing,2019,32(3):294-306.
[21]LIU Y,GARG S,NIE J,et al. Deep anomaly detection for time-series data in industrial iot:A communication-efficient on-device federated learning approach[J]. IEEE internet things,2020,8(8):6348-6358.
[22]HU Y,WU L,ZHANG L,et al. Review on Theory and method of cloud manufacturing service evaluation[J]. Computer integrated manufacturing systems,2017,23(3):640-649.
[23]ZHU H,ZHOU M C,ALKINS R. Group role assignment via a kuhn-munkres algorithm-based solution[J]. IEEE transactions on systems,man,and cybernetics — Part A:systems and humans,2012,42(3),739-750.
[24]TAN W,HUANG L,ZHAO L,et al. A Role-based semantic framework for collaborative socialized process model reconstruction[C]//Computer Supported Cooperative Work and Social Computing. ChineseCSCW,2018.
[25]HUANG L,ZHAO L,LIU Y,et al. Hierarchical service composition via blockchain-enabled federated learning[J]. Data sci eng,2024,https://doi.org/10.1007/s41019-024-00258-7.

Memo

Memo:
-
Last Update: 2024-12-15