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Introduction To Nonparametric Regression 1st Edition K Takezawa

  • SKU: BELL-897120
Introduction To Nonparametric Regression 1st Edition K Takezawa
$ 31.00 $ 45.00 (-31%)

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Introduction To Nonparametric Regression 1st Edition K Takezawa instant download after payment.

Publisher: Wiley-Interscience
File Extension: DJVU
File size: 3.57 MB
Pages: 557
Author: K. Takezawa
ISBN: 9780471745839, 9780471771449, 0471745839, 0471771449
Language: English
Year: 2006
Edition: 1

Product desciption

Introduction To Nonparametric Regression 1st Edition K Takezawa by K. Takezawa 9780471745839, 9780471771449, 0471745839, 0471771449 instant download after payment.

Written for undergraduate and graduate courses, this text takes a step-by-step approach and assumes students have only a basic knowledge of linear algebra and statistics. The explanations therefore avoid complex mathematics and excessive abstract theory, and even statistical information is accompanied by clear numerical examples and equations are explained all the way through the process. Topics include smoothing out data with an equispaced predictor, nonparametric regression for a one-dimensional predictor, multidimensional smoothing, nonparametric regression with predictors represented as distributions, smoothing of histograms and nonparametric probability density functions and pattern recognition. Each chapter includes exercises.

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