Title :
Using case-based reasoning as a reinforcement learning framework for optimisation with changing criteria
Author :
Zeng, Dajun ; Sycara, Katia
Author_Institution :
Robotics Inst., Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
Practical optimization problems such as job-shop scheduling often involve optimization criteria that change over time. Repair-based frameworks have been identified as flexible computational paradigms for difficult combinatorial optimization problems. Since the control problem of repair-based optimization is severe, reinforcement learning (RL) techniques can be potentially helpful. However, some of the fundamental assumptions made by traditional RL algorithms are not valid for repair-based optimization. Case-based reasoning compensates for some of the limitations of traditional RL approaches. We present a case-based reasoning RL approach, implemented in the CABINS system, for repair-based optimization. We chose job-shop scheduling as the testbed for our approach. Our experimental results show that CA BINS is able to effectively solve problems with changing optimization criteria which are not known to the system and only exist implicitly in a extensional manner in the case base
Keywords :
case-based reasoning; learning by example; optimisation; production control; scheduling; software agents; CABINS system; case-based reasoning; case-based reasoning RL approach; combinatorial optimization; flexible computational paradigms; job-shop scheduling; optimization criteria; optimization problems; reinforcement learning framework; repair-based frameworks; Artificial intelligence; Design optimization; Learning; Optimization methods; Problem-solving; Processor scheduling; Robots; Search methods; Signal processing; Testing;
Conference_Titel :
Tools with Artificial Intelligence, 1995. Proceedings., Seventh International Conference on
Conference_Location :
Herndon, VA
Print_ISBN :
0-8186-7312-5
DOI :
10.1109/TAI.1995.479378