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Gaussian Processes for Machine Learning
2.1.1 The Standard Linear Model We will review the Bayesian analysis of the standard linear regression model with Gaussian noise f(x) = x>w, y = f(x)+ε, (2.1) where x is the input vector, w is a vector of weights (parameters) of the linear bias, offset model, fis the function value and yis …
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