Evolutionary Multitasking for Semantic Web Service Composition
Chen Wang,Hui Ma,Gang Chen,Sven Hartmann +3 more
- 10 Jun 2019
- pp 2490-2497
TL;DR: In this article, an effective permutation-based evolutionary multi-tasking approach that can simultaneously generate a set of solutions, with one for each service request, was proposed to solve the problem of web service composition.
read more
Abstract: Web services are basic functions of a software system to support the concept of service-oriented architecture. They are often composed together to provide added values, known as web service composition. Researchers often employ Evolutionary Computation techniques to efficiently construct composite services with near-optimized functional quality (i.e., Quality of Semantic Matchmaking) or non-functional quality (i.e., Quality of Service) or both due to the complexity of this problem. With a significant increase in service composition requests, many composition requests have similar input and output requirements but may vary due to different preferences from different user segments. This problem is often treated as a multi-objective service composition so as to cope with different preferences from different user segments simultaneously. Without taking a multi-objective approach that gives rise to a solution selection challenge, we perceive multiple similar service composition requests as jointly forming an evolutionary multi-tasking problem in this work. We propose an effective permutation-based evolutionary multi-tasking approach that can simultaneously generate a set of solutions, with one for each service request. We also introduce a neighborhood structure over multiple tasks to allow newly evolved solutions to be evaluated on related tasks. Our proposed method can perform better at the cost of only a fraction of time, compared to one state-of-art single-tasking EC-based method. We also found that the use of the proper neighborhood structure can enhance the effectiveness of our approach.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Evolutionary Multitasking for Multiobjective Optimization With Subspace Alignment and Adaptive Differential Evolution.
TL;DR: A novel multiobjective EMT algorithm based on subspace alignment and self-adaptive differential evolution (DE), namely, MOMFEA-SADE, is proposed in this article and it is shown that the experimental results on multiobjectives multi/many-tasking optimization test suites show that MOM FEA- SADE is superior or comparable to other state-of-the-art EMT algorithms.
124
Half a Dozen Real-World Applications of Evolutionary Multitasking, and More
TL;DR: A review of several application-oriented explorations of evolutionary multitasking in the literature is presented; the works are assimilated into half a dozen broad categories according to their respective application domains, and a set of recipes is provided showing how problem formulations of general interest, those that cut across different disciplines, could be transformed in the new light of EMT as mentioned in this paper .
•Posted Content
Evolutionary Multitask Optimization: a Methodological Overview, Challenges and Future Research Directions.
TL;DR: In this article, a survey of evolutionary multitasking is presented, with an emphasis on the methodological patterns followed when designing new algorithmic proposals in this area (namely, multifactorial optimization and multipopulation-based multitasking).
62
Multi-Task Optimization and Multi-Task Evolutionary Computation in the Past Five Years: A Brief Review
Qingzheng Xu,Na Wang,Lei Wang,Wei Li,Qian Sun +4 more
- 14 Apr 2021
TL;DR: Multi-task evolutionary computation (MTEC) has recently emerged as an effective means of facilitating implicit or explicit knowledge transfer across optimization tasks, thereby potentially accelerating convergence and improving the quality of solutions for multi-task optimization problems as discussed by the authors.
59
AT-MFCGA: An Adaptive Transfer-guided Multifactorial Cellular Genetic Algorithm for Evolutionary Multitasking
TL;DR: Adaptive Transfer-guided Multifactorial Cellular Genetic Algorithm (AT-MFCGA) as discussed by the authors relies on cellular automata to implement mechanisms in order to exchange knowledge among the optimization problems under consideration.
32
References
A survey of automated web service composition methods
Jinghai Rao,Xiaomeng Su +1 more
- 06 Jul 2004
TL;DR: An overview of recent research efforts of automatic Web service composition both from the workflow and AI planning research community is given.
Multifactorial Evolution: Toward Evolutionary Multitasking
TL;DR: This paper formalizes the concept of evolutionary multitasking and proposes an algorithm to handle multiple optimization problems simultaneously using a single population of evolving individuals and develops a cross-domain optimization platform that allows one to solve diverse problems concurrently.
838
QoS-based Discovery and Ranking of Web Services
Eyhab Al-Masri,Qusay H. Mahmoud +1 more
- 24 Sep 2007
TL;DR: The Web service relevancy function (WsRF) used for measuring the relevancies ranking of a particular Web service based on client's preferences, and QoS metrics is introduced and presented.
586
Competitive Memetic Algorithms for Arc Routing Problems
TL;DR: Basic components that can be combined into powerful memetic algorithms (MAs) for solving an extended version of the Capacitated Arc Routing Problem (ECARP) are presented.
Evolutionary multitasking in permutation-based combinatorial optimization problems: Realization with TSP, QAP, LOP, and JSP
Yuan Yuan,Yew-Soon Ong,Abhishek Gupta,Puay Siew Tan,Hua Xu +4 more
- 01 Nov 2016
TL;DR: Two novel mechanisms, namely, a new unified representation and a new survivor selection procedure, are introduced to better adapt to PCOPs based on a recently proposed multitasking engine known as the multifactorial evolutionary algorithm (MFEA).
150