Preface
Published online by Cambridge University Press: 05 June 2012
Summary
Statistical learning machines live at the triple-point of statistical data analysis, pure mathematics, and computer science. Learning machines form a still rapidly expanding family of technologies and strategies for analyzing an astonishing variety of data. Methods include pattern recognition, classification, and prediction, and the discovery of networks, hidden structure, or buried relationships. This book focuses on the problem of using biomedical data to classify subjects into just two groups. Connections are drawn to other topics that arise naturally in this setting, including how to find the most important predictors in the data, how to validate the results, how to compare different prediction models (“engines”), and how to combine models for better performance than any one model can give. While emphasis is placed on the core ideas and strategies, keeping mathematical gadgets in the background, we provide extensive plain-text translations of recent important mathematical and statistical results. Important learning machine topics that we don't discuss, but which are being studied actively in the research literature, are described in Chapter 13: Summary and conclusions.
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- Publisher: Cambridge University PressPrint publication year: 2011