A Multistrategy Learning Scheme for Assimilating Advice in Embedded Agents
Diana F. Gordon
- 发表年份
- 1993
- 引用次数
- 7
摘要
The problem of designing and refining tasklevel strategies in an embedded multiagent setting is an important unsolved question. To address this problem, we have developed a multistrategy system that combines two learning methods: operationalization of high-level advice provided by a human and incremental refinement by a genetic algorithm. The first method generates seed rules for finer-grained refinements by the genetic algorithm. Our multistrategy learning system is evaluated on two complex simulated domains as well as with a Nomad 200 robot. Key words: advice, operationalize, genetic algorithms 1 Introduction The problem of designing and refining tasklevel strategies in an embedded multi-agent setting is an important unsolved question. To address this problem, we have developed a multistrategy learning system that combines two learning methods: operationalization of high-level advice provided by a human, and incremental refinement by a genetic algorithm (GA). We define advice as a ...
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