Introduction to Bayesian Learning
learning,” I suggest mentally substituting the phrase “statistical data fitting” instead. I truly believe that current machine learning research and neuroscience research are on the verge of understanding how the brain works. However, this is still conjecture, and one does not need to believe this to see the power of Bayesian methods.
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