Integrating reinforcement learning and skyline computing for adaptive service composition
Tài liệu tham khảo
Baresi, 2011, Self-supervising bpel processes, IEEE Trans. Software Eng., 37, 247, 10.1109/TSE.2010.37
Ye, 2013, Whitening soa testing via event exposure, IEEE Trans. Software Eng., 39, 1444, 10.1109/TSE.2013.20
Dustdar, 2005, A survey on web services composition, Int. J. Web Grid Serv., 1, 1, 10.1504/IJWGS.2005.007545
Wang, 2018, Effective bigdata-space service selection over trust and heterogeneous qos preferences, IEEE Trans. Serv. Comput., 644, 10.1109/TSC.2015.2480393
Wang, 2013, A novel approach to large-scale services composition, 220
Wu, 2016, A multilevel index model to expedite web service discovery and composition in large-scale service repositories, IEEE Trans. Serv. Comput., 9, 330, 10.1109/TSC.2015.2398442
Papadias, 2003, An optimal and progressive algorithm for skyline queries, 467
Borzsony, 2001, The skyline operator, 421
Sutton, 1998, 2
Cao, 2015, A context-aware adaptive web service composition framework, 62
Wang, 2014, Designing a self-adaptive and context-aware service composition system, 155
Cheng, 2017, Situation-aware dynamic service coordination in an iot environment, IEEE/ACM Trans. Netw. (TON), 25, 2082, 10.1109/TNET.2017.2705239
Khanfir, 2017, Self-adaptive goal-driven web service composition based on context and qos, 201
Yan, 2010, Repairing Service Compositions in a Changing World, 17
Chen, 2009, Markov-htn planning approach to enhance flexibility of automatic web service composition, 9
Uc-Cetina, 2015, Composition of web services using markov decision processes and dynamic programming, Scientif. World J., 2015, 10.1155/2015/545308
Cheng, 2015, Adaptive video transmission control system based on reinforcement learning approach over heterogeneous networks, IEEE Trans. Autom. Sci. Eng., 12, 1104, 10.1109/TASE.2014.2387212
Xu, 2019, Robust control of uncertain linear systems based on reinforcement learning principles, IEEE Access, 7, 16431, 10.1109/ACCESS.2019.2894594
Mahboob, 2019, Optimized routing in software defined networks–a reinforcement learning approach, 267
Jungmann, 2014, Applying reinforcement learning for resolving ambiguity in service composition, 105
Liu, 2011, A scalable web service composition based on a strategy reused reinforcement learning approach, 58
Wang, 2017, Integrating reinforcement learning with multi-agent techniques for adaptive service composition, ACM Trans. Auton. Adapt. Syst. (TAAS), 12, 8:1
Rahman, 2017, Efficient computation of subspace skyline over categorical domains, 407
Liu, 2018, Secure and efficient skyline queries on encrypted data, IEEE Trans. Knowl. Data Eng., 31, 1397, 10.1109/TKDE.2018.2857471
Lee, 2014, Toward efficient multidimensional subspace skyline computation, VLDB J. Int. J. Very Large Data Bases, 23, 129, 10.1007/s00778-013-0317-y
Pei, 2007, Computing compressed multidimensional skyline cubes efficiently, 96
Jureta, 2007, Dynamic web service composition within a service-oriented architecture, 304
Benouaret, 2012, Selecting skyline web services from uncertain qos, 523
Zhao, 2013, Finding preferred skyline solutions for sla-constrained service composition, 195
Watkins, 1992, Q-Learning, Mach. Learn., 8, 279, 10.1007/BF00992698
Wang, 2010, Adaptive service composition based on reinforcement learning, 92
Huang, 2006, Skyline queries against mobile lightweight devices in manets
Wang, 2016, A multi-agent reinforcement learning approach to dynamic service composition, Inf. Sci. (Ny), 363, 96, 10.1016/j.ins.2016.05.002
Doshi, 2004, Dynamic workflow composition using markov decision processes, 576
Al-Masri, 2007, Discovering the best web service, 1257
Zheng, 2014, Investigating qos of real-world web services, IEEE Trans. Serv. Comput., 1, 32, 10.1109/TSC.2012.34
Wang, 2014, Adaptive and dynamic service composition via multi-agent reinforcement learning, 447
Salehie, 2009, Self-adaptive software: landscape and research challenges, ACM Trans. Auton. Adapt. Syst. (TAAS), 4, 14:1
Vogel, 2014, Model-driven engineering of self-adaptive software with eurema, ACM Trans. Auton. Adapt. Syst. (TAAS), 8, 18:1