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Machine Learning (Theory)

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Posted on 2/4/20052/4/2005 by John Langford

JMLG

The Journal of Machine Learning Gossip has some fine satire about learning research. In particular, the guides are amusing and remarkably true.

As in all things, it’s easy to criticize the way things are and harder to make them better.

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