机器学习基石 3.2 Learning with Different Data Label
2017-07-19 10:05
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Supervised
Unsupervised
Semi-supervised
Reinforcement Learning
分群的问题通常更为困难,因为不知道要分成几类。比如对硬币的分群可能会少分一种。
一些无监督学习的例子
Unsupervised
Semi-supervised
Reinforcement Learning
1. Supervised
2. Unsupervised
分群的问题通常更为困难,因为不知道要分成几类。比如对硬币的分群可能会少分一种。
一些无监督学习的例子
3. Semi-supervised
适用于标记很费精力的情况。4. Reinforcement Learning
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