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Reactive Search strategies using Reinforcement Learning,local search algorithms and Variable Neighborhood Search
Affiliation:1. Federal Institute of Education, Science and Technology of Rio Grande do Norte, Campus Natal-Zona Norte, Natal, RN, Brazil;2. Federal University of Rio Grande do Norte, Department of Computer Engineering and Automation, Natal, RN, Brazil;1. University of Information Technology, Vietnam National University, Ho Chi Minh, Viet Nam;2. Information Technology Department, Ton Duc Thang University, Ho Chi Minh, Viet Nam;3. Department of Computer Science, University of Science, Vietnam National University, Ho Chi Minh, Viet Nam;1. Faculty of Engineering & Computer Science, Concordia University, 1515 Ste-Catherine Street West, EV7.640, Montreal, Quebec, Canada H3G 2W1;2. College of Engineering, Khalifa University of Science, Technology, & Research, Abu Dhabi, United Arab Emirates;3. Faculty of Science, McGill University, Dawson Hall, 853 Sherbrooke St. West Montreal, Quebec, Canada H3A 0G5;1. Department of Computer Science and Information Engineering, National Cheng Kung University, 1, University Road, Tainan City 701, Taiwan, ROC;2. Department of Computer Science and Information Engineering, National Kaohsiung University of Applied Sciences, Kaohsiung 80778, Taiwan, ROC;3. Cloud Service Technology Center, Industrial Technology Research Institute (ITRI South), Tainan, Taiwan, ROC;1. National Taipei University, No. 151, University Road, San Shia District, Taipei 23741, Taiwan;2. Takming University of Science and Technology, No.56, Sec.1, Huanshan Rd., Taipei 11451, Taiwan;3. National Chengci University, No. 64, Sec. 2, Zhi-Nan Road, Taipei 11605, Taiwan;1. Yahoo! Research Latin America, Blanco Encalada 2120, Santiago, Chile;2. Escuela de Ingeniería Informática, Universidad Diego Portales, Santiago, Chile;3. DFKI GmbH, Stuhlsatzenhausweg 3, Campus D3_2, D-66123 Saarbrücken, Germany
Abstract:Optimization techniques known as metaheuristics have been applied successfully to solve different problems, in which their development is characterized by the appropriate selection of parameters (values) for its execution. Where the adjustment of a parameter is required, this parameter will be tested until viable results are obtained. Normally, such adjustments are made by the developer deploying the metaheuristic. The quality of the results of a test instance [The term instance is used to refer to the assignment of values to the input variables of a problem.] will not be transferred to the instances that were not tested yet and its feedback may require a slow process of “trial and error” where the algorithm has to be adjusted for a specific application. Within this context of metaheuristics the Reactive Search emerged defending the integration of machine learning within heuristic searches for solving complex optimization problems. Based in the integration that the Reactive Search proposes between machine learning and metaheuristics, emerged the idea of putting Reinforcement Learning, more specifically the Q-learning algorithm with a reactive behavior, to select which local search is the most appropriate in a given time of a search, to succeed another local search that can not improve the current solution in the VNS metaheuristic. In this work we propose a reactive implementation using Reinforcement Learning for the self-tuning of the implemented algorithm, applied to the Symmetric Travelling Salesman Problem.
Keywords:Reactive Search  Reinforcement Learning  Local search  Variable Neighborhood Search  Combinatorial optimization
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