Evolution at learning: How to promote generalization?

作者: Ibrahim Kuschchu

DOI: 10.1007/978-3-540-45080-1_34

关键词:

摘要: This paper introduces generalisation concept from machine learning research and attempts to relate it the evolutionary research. Fundamental concepts related computational issue of genaralisation are presented. Then some experiments evaluated according how well they these established in traditional learning. The concludes with emphasizing importance practices.

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