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MIT-machine-learning-course

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文件列表:
MIT machine learning course (0, 2004-05-13)
MIT machine learning course\Introduction.pdf (150101, 2004-05-13)
MIT machine learning course\lagrange.pdf (63899, 2004-05-13)
MIT machine learning course\lecture1- Introduction.pdf (150101, 2004-05-13)
MIT machine learning course\lecture16-Markov and hidden Markov models.pdf (116954, 2004-05-13)
MIT machine learning course\lecture17-Hidden Markov models.pdf (140498, 2004-05-13)
MIT machine learning course\lecture19-Bayesian networks.pdf (112522, 2004-05-13)
MIT machine learning course\lecture2-Linear regression.pdf (136242, 2004-05-13)
MIT machine learning course\lecture22-Belief propagation.pdf (101866, 2004-05-13)
MIT machine learning course\lecture23-Learning graphical models (guest lecture).pdf (212293, 2004-05-13)
MIT machine learning course\lecture4-Active learning.pdf (121447, 2004-05-13)
MIT machine learning course\lecture5-Classification.pdf (273308, 2004-05-13)
MIT machine learning course\Linear regression.pdf (136242, 2004-05-13)
MIT machine learning course\regularization.pdf (90675, 2004-05-13)

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