Transcription of Gaussian Processes for Machine Learning
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C. E. Rasmussen & C. K. I. Williams, Gaussian Processes for Machine Learning , the MIT Press, 2006,ISBN 2006 Massachusetts Institute of 2 RegressionSupervised Learning can be divided into regression and classification the outputs for classification are discrete class labels, regression isconcerned with the prediction of continuous quantities. For example, in a fi-nancial application, one may attempt to predict the price of a commodity asa function of interest rates, currency exchange rates, availability and this chapter we describe Gaussian process methods for regression problems;classification problems are discussed in chapter are several ways to interpret Gaussian process (GP) regression can think of a Gaussian process as defining a distribution over functions,and inference taking place directly in the space of functions, thefunction-spacetwo equivalent viewsview. Although this view is appealing it may initially be difficult to grasp,so we start our exposition in section with the equivalentweight-space viewwhich may be more familiar and accessible to many, and continue in with the function-space view.
C. E. Rasmussen & C. K. I. Williams, Gaussian Processes for Machine Learning, the MIT Press, 2006, ISBN 026218253X. 2006 Massachusetts Institute of Technology.c www.GaussianProcess.org/gpml
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Chapter 2: Maximum Likelihood Estimation, Maximum likelihood, Using Maximum Entropy for Text Classi, Likelihood, Handling Missing Data by Maximum, Handling Missing Data by Maximum Likelihood, Maximum Likelihood Estimation and Nonlinear, Maximum Likelihood Estimation of an, Maximum likelihood estimation of mean reverting, Maximum likelihood estimation of mean reverting processes, Maximum, Models for Survival Analysis with Covariates, LOPA Articles