Data-intensive Service Mashup based on Game theory and Hybrid Fireworks Optimization Algorithm in the Cloud
Abstract
End users can create kinds of mashups which combine various data-intensive services to form new services. The challenging issue of data-intensive service mashup is how to find service from a great deal of candidate services while satisfying SLAs. In this paper, Service-Level Agreement (SLA) consists of two parts, which are SLA-Q and SLA-T. SLA-Q (SLA-T) indicates the end-to-end QoS (transactional) requirements. SLA-aware service mashup problem is known as NP-hard, which takes a significant amount of time to find optimal solutions. The service correlation also exists in data-intensive service mashup problem. In this paper, the service correlation includes the functional correlation and QoS correlation. For efficiently solving the dataintensive service mashup problem with service correlation, we propose an approach GTHFOA-DSMSC (Dataintensive Service Mashup with Service Correlation based on Game Theory and Hybrid Fireworks Optimization Algorithm) which evolves a set of solutions to the Pareto optimal front. The experimental tests demonstrate the effectiveness of the algorithm.
Full Text:
PDFReferences
A. Bouguettaya, S. Nepal, W. Sherchan, X. Zhou, J.Wu, S. Chen, L. Liu, H. Wang and X. Liu. (2010).End-to-End Service Support for Mashups. IEEE Transactions on Service Computing, 3(3), pp. 250-263.
A. Ngu, M. Carlson, Q. Sheng and Hye-young Paik.(2010). Semantic-Based Mashup of Composite Applications. IEEE Transactions on ServiceComputing, 3(1), pp. 2-15.
F.H. Zulkernine and P. Martin. (2011). An Adaptive and Intelligent SLA Negotiation System for Web Services. IEEE Transactions on Service Computing,4(1), pp. 1939-1374.
L. Zeng, B. Benatallah, A. Ngu, M. Dumas, J.Kalagnanam and H. Chang. (2004). QoS-aware middleware for web services composition. IEEE Transactions on Software Engineering, 30(5), pp.311-327.
D. Ardagna and B. Pernici. (2004). Adaptive service composition in flexible processes. IEEE Transactions on Software Engineering, 33(6), pp.369-384.
T.Yu, Y.Zhang and K.J.Lin. (2007). Efficient Algorithms for Web service selection with End-to-End QoS Constraints. ACM Transactions on the Web,1(1), pp. 129-136.
M. Alrifai, T. Risse and W. Nejdl. (2012). A hybrid approach for efficient Web service composition withend-to-end QoS constraints. ACM Transactions onthe Web, 6(2): 7.
M. Alrifai, D. Skoutas and T. Risse. (2010).Selecting Skyline Services for QoS-based Web Service Composition. 19th International Conferenceon World Wide Web, pp. 11-20.
K. Benouaret, D. Benslimane and A. Hadjali. (2011).On the Use of Fuzzy Dominance for Computing Service Skyline Based on QoS. IEEE International Conference on Web Services, pp. 540-547.
K. Benouaret, D. Benslimane and A. Hadjali. (2012).WS-Sky: An Efficient and Flexible Framework for QoS-Aware Web Service Selection. IEEE Ninth International Conference on Services Computing,pp.146-153.
Q. Yu and A. Bouguettaya. (2013). Efficient service skyline computation for composite service selection. IEEE transactions on knowledge and dataengineering, 25(4), pp. 776-789.
G. Canfora, M. Penta, R.Esposito and M. Villani.(2005). An approach for QoS-aware service composition based on genetic algorithms. 7th annual conference on Genetic and evolutionarycomputation, pp. 1069-1075.
Y. Ma and C. Zhang. (2008). Quick convergence of genetic algorithm for QoS-driven web service selection. Computer Networks, 52(5), pp. 1093-1104.
Y. Syu, Y. FanJiang, J. Kuo and S. Ma. (2012). A Genetic Algorithm with Prioritized Objective Functions for Service Composition. 26th International Conference on Advanced Information Networking and Applications Workshops, pp. 932-937.
M. Chen and S. Ludwig. (2012). Fuzzy-guided Genetic Algorithm applied to the Web Service Selection Problem. IEEE World Congress on Computational Intelligence, pp. 1-8.[16] Y. Yu, H. Ma and M. Zhang. (2013). An adaptivegenetic programming approach to QoS-aware webservices composition. IEEE World Congress on Evolutionary Computation, pp. 1740-1747.
F. Lecue and N. Mehandjiev. (2011). Seeking Quality of Web Service Composition in a Semantic Dimension. IEEE Transactions on Knowledge and Data Engineering, 23(6), pp. 942-959.
A.E.Yilmaz and P. Karagoz. (2014). Improved Genetic Algorithm based Approach for QoS Aware Web Service Composition. IEEE International Conference on Web Services, pp. 463-470.
X. Wang, Z. Wang and X. Xu. (2013). An ImprovedArtificial Bee Colony Approach to QoS-AwareService Selection. IEEE International Conference onWeb Services, pp. 395-402.
X. Zhao, B. Song, P. Huang, Z. Wen, J. Weng and Y. Fan. (2012). An improved discrete immune optimization algorithm based on PSO for QoS driven web service composition. Applied SoftComputing, 12(8), pp. 2208-2216.
G. Kang, J. Liu, M. Tang and Y. Xu. (2012). An Effective Dynamic Web Service Selection Strategy with Global Optimal QoS Based on Particle Swarm Optimization Algorithm. IEEE 26th InternationalParallel and Distributed Processing Symposium Workshops & PhD Forum, pp.2280-2285.
L. Sun, J. Singh and O. Hussain. (2012). Service Level Agreement (SLA) Assurance for Cloud Services: A Survey from a Transactional Risk Perspective. 10th International Conference on Advances in Mobile Computing & Multimedia, pp.263-266.
J.E. Haddad and G. Ramirez. (2010). TQoS: Transactional and QoS-aware Selection Algorithm for Automatic Web Service Composition. IEEE Transactions on Service Computing, 3(1), pp. 73-85.
Q. Wu and Q. Zhu. (2013). Transactional and QoS aware dynamic service composition based on antcolony optimization. Future Generation Computer Systems, 29(5), pp. 1112-1119.
H.Wada, J. Suzuki, Y.Yamano and K. Oba. (2012).E3: A Multiobjective Optimization Framework for SLA-Aware Service Composition. IEEE Transactions on Service Computing, 5(3), pp. 358-372.
F. Wagner, B. Klopper, F. Ishikawa and S. Honiden.(2012). Towards Robust Service Compositions in the Context of Functionally Diverse Services. International Conference on World Wide Web, pp.969-978.
A. Moustafa and M. Zhang. (2013). Multi-Objective Service Composition Using Reinforcement Learning. International Conference on Service-Oriented Computing, pp.298-312.
H. Yin, C. Zhang, B. Zhang, Y. Guo and T. Liu.(2014). A Hybrid Multiobjective Discrete Particle Swarm Optimization Algorithm for a SLA-Aware Service Composition Problem. Mathematical Problems in Engineering, vol 2014, pp. 1-14.
Y. Tan and Y. Zhu. (2010). Fireworks Algorithm for Optimization. International Conference on Swarm Intelligence, pp.355-364.
Y. Pei, S. Zheng, Y. Tan and H. Takagi. (2012). An Empirical Study on Influence of Approximation Approaches on Enhancing Fireworks Algorithm. IEEE International Conference on Systems, Man,and Cybernetics, pp. 1322-1327.
J.D.Knowles and D.W.Corne. (2000). Approximating the nondominated front using the Pareto archived evolution strategy. Evolutionary Computation, 8(2), pp. 149–172.
K. Deb, A. Pratap, S. Agarwal and T. Meyarivan. (2002). A Fast and Elitist Multiobjective Genetic Algorithm:NSGA-II. IEEE Transactions on Evolutionary Computation, 6(2), 182–197.
S. Kukkonen and J. Lampinen. (2005). GDE3: The third Evolution Step of Generalized Differential Evolution. IEEE Congress on Evolutionary Computation, pp. 443-450.
This work is licensed under a Creative Commons Attribution 3.0 License.