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Journal ArticleDOI

The Elements of Statistical Learning

Eric R. Ziegel
- 01 Aug 2003 - 
- Vol. 45, Iss: 3, pp 267-268
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TLDR
Chapter 11 includes more case studies in other areas, ranging from manufacturing to marketing research, and a detailed comparison with other diagnostic tools, such as logistic regression and tree-based methods.
Abstract
Chapter 11 includes more case studies in other areas, ranging from manufacturing to marketing research. Chapter 12 concludes the book with some commentary about the scientiŽ c contributions of MTS. The Taguchi method for design of experiment has generated considerable controversy in the statistical community over the past few decades. The MTS/MTGS method seems to lead another source of discussions on the methodology it advocates (Montgomery 2003). As pointed out by Woodall et al. (2003), the MTS/MTGS methods are considered ad hoc in the sense that they have not been developed using any underlying statistical theory. Because the “normal” and “abnormal” groups form the basis of the theory, some sampling restrictions are fundamental to the applications. First, it is essential that the “normal” sample be uniform, unbiased, and/or complete so that a reliable measurement scale is obtained. Second, the selection of “abnormal” samples is crucial to the success of dimensionality reduction when OAs are used. For example, if each abnormal item is really unique in the medical example, then it is unclear how the statistical distance MD can be guaranteed to give a consistent diagnosis measure of severity on a continuous scale when the larger-the-better type S/N ratio is used. Multivariate diagnosis is not new to Technometrics readers and is now becoming increasingly more popular in statistical analysis and data mining for knowledge discovery. As a promising alternative that assumes no underlying data model, The Mahalanobis–Taguchi Strategy does not provide sufŽ cient evidence of gains achieved by using the proposed method over existing tools. Readers may be very interested in a detailed comparison with other diagnostic tools, such as logistic regression and tree-based methods. Overall, although the idea of MTS/MTGS is intriguing, this book would be more valuable had it been written in a rigorous fashion as a technical reference. There is some lack of precision even in several mathematical notations. Perhaps a follow-up with additional theoretical justiŽ cation and careful case studies would answer some of the lingering questions.

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References
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Journal ArticleDOI

Multivariate Adaptive Regression Splines

TL;DR: In this article, a new method is presented for flexible regression modeling of high dimensional data, which takes the form of an expansion in product spline basis functions, where the number of basis functions as well as the parameters associated with each one (product degree and knot locations) are automatically determined by the data.
Journal ArticleDOI

Projection Pursuit Regression

TL;DR: In this article, a nonparametric multiple regression (NMM) method is presented, which models the regression surface as a sum of general smooth functions of linear combinations of the predictor variables in an iterative manner.
Journal ArticleDOI

A review and analysis of the Mahalanobis-Taguchi system

TL;DR: The Mahalanobis-Taguchi system (MTS) as mentioned in this paper is a relatively new collection of methods proposed for diagnosis and forecasting using multivariate data, which is used to measure the level of abnormality of abnormal items compared to a group of normal items.
Journal ArticleDOI

Independent Component Analysis: Principles and Practice

William S Rayens
- 01 Feb 2003 - 
TL;DR: Given the somewhat questionable organization of the book’s chapters, as well as the lack of smooth transitions between sections of this book, I recommend it for the experienced reader rather than the novice, even though a novice might find much of the advice valuable.
Journal ArticleDOI

The Mahalanobis-Taguchi Strategy

TL;DR: The Mahalanobis-Taguchi Strategy by Genichi Taguchi and Rajesh Jugulum as mentioned in this paper... The Deming Paradigm and Beyond 2nd ed.