A Coevolutionary Approach to Learning Sequential Decision Rules
Mitchell A. Potter, Kenneth De Jong, John J. Grefenstette
- 发表年份
- 1995
- 引用次数
- 144
摘要
We present a coevolutionary approach to learning sequential decision rules which appears to have a number of advantages over non-coevolutionary approaches. The coevolutionary approach encourages the formation of stable niches representing simpler subbehaviors. The evolutionary direction of each subbehavior can be controlled independently, providing an alternative to evolving complex behavior using intermediate training steps. Results are presented showing a significant learning rate speedup over a noncoevolutionary approach in a simulated robot domain. In addition, the results suggest the coevolutionary approach may lead to emergent problem decompositions. 1 Introduction For both natural and artificial organisms the ability to learn complex behavior is desirable, but difficult to achieve. Techniques such as "shaping" are frequently used to construct complex behaviors in stages by breaking them down into simpler behaviors which can be learned more easily, and then using these simpler b...
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