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Principles of Data Mining

(Adaptive Computation and Machine Learning)

3.72  ·  Rating details ·  29 ratings  ·  1 review
The first truly interdisciplinary text on data mining, blending the contributions of information science, computer science, and statistics.

The growing interest in data mining is motivated by a common problem across disciplines: how does one store, access, model, and ultimately describe and understand very large data sets? Historically, different aspects of data mining have
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Hardcover, 578 pages
Published August 17th 2001 by Bradford Book (first published August 1st 2001)
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David J. Hand is Senior Research Investigator and Emeritus Professor of Mathematics at Imperial College, London, and Chief Scientific Advisor to Winton Capital Management. He is a Fellow of the British Academy, and a recipient of the Guy Medal of the Royal Statistical Society. He has served (twice) as President of the Royal Statistical Society, and is on the Board of the UK Statistics Authority. ...more

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