机器学习基石 3.4 Learning with Different Input Space
2017-07-19 10:29
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Concrete Features
Raw Features
Abstract Features
在ML中是比较简单的情形。
Raw Features
Abstract Features
1. Concrete Features
每一个维度都有精确的意义。在ML中是比较简单的情形。
2. Raw Features
3.Abstract Features
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