Cardinal

Object Oriented Data Analysis by J.S. Marron Hardcover Book

Description: FREE SHIPPING UK WIDE Object Oriented Data Analysis by J.S. Marron, Ian L. Dryden Object Oriented Data Analysis (OODA) provides a useful general framework for the consideration of many types of Complex Data. It is deliberately intended to be particularly useful in the analysis of data in complicated situations which are typically not easily represented as an unconstrained matrix of numbers. FORMAT Hardcover CONDITION Brand New Publisher Description Object Oriented Data Analysis is a framework that facilitates inter-disciplinary research through new terminology for discussing the often many possible approaches to the analysis of complex data. Such data are naturally arising in a wide variety of areas. This book aims to provide ways of thinking that enable the making of sensible choices.The main points are illustrated with many real data examples, based on the authors personal experiences, which have motivated the invention of a wide array of analytic methods.While the mathematics go far beyond the usual in statistics (including differential geometry and even topology), the book is aimed at accessibility by graduate students. There is deliberate focus on ideas over mathematical formulas. Author Biography J. S. Marron is the Amos Hawley Distinguished Professor of Statistics, Professor of Biostatistics, Adjunct Professor of Computer Science, Faculty Member of the Bioinformatics and Computational Biology Curriculum and Research Member of the Lineberger Cancer Center and the Computational Medicine Program, at the University of North Carolina, Chapel Hill.Ian L. Dryden is a Professor in the Department of Mathematics and Statistics at Florida International University in Miami, has served as Head of School of Mathematical Sciences at the University of Nottingham, and is joint author of the acclaimed book Statistical Shape Analysis. Table of Contents What is OODA? Breadth of OODA Data Object Definition Exploratory and Confirmatory Analyses OODA P6 Data Visualization Distance Based Methods Manifold Data Analysis FDA Curve Registration Graph Structured Data Objects Classification - Supervised Learning Clustering - Unsupervised Learning High Dimensional Inference High Dimensional Asymptotics Smoothing and SiZer Robust Methods PCA Details and Variants OODA Context and Related Areas Review I wrote a report last year on an earlier draft of the book. I was enthusiastic then and I remain so. I can see the book being very popular both with graduate students and with more advanced researchers in disciplines such as Statistics, Biology, Computer Science and Engineering. There is lots of common sense advice, a lot of informative graphs, and not too much theory…I regard the manuscript as a breath of fresh air in an area where there can be a tendency to make the material overly technical."-John Kent, University of Leeds"We need this book badly in statistics. This field, like most in the mathematical sciences tends to generate a literature that offers more and more exposition of research on less and less. The authors say this well in their first two pages, where they point out how much of statistical practice, literature and software assumes data in the form of a two-dimensional table. As in functional data analysis, the theoreticians will sniff and grouch about the lack of theory, but this quickly follows as they see the opportunities for more intense mathematical effort in the area. Both authors are high levels theoreticians in their own right."-Jim Ramsay, McGill University"The chapters I have read are very informative and convey the deep insight of two senior specialists in the field. This is very valuable, especially for younger scientists that want to quickly grasp the fundamentals of the field…The particular strength of this book is that is connects classical statistics, "classical" machine learning and statistics on non-Euclidean spaces with one another…This is a book I have been waiting for and I love to read it in detail and profit from it for research and teaching, once it is finished."-Stephan F. Huckemann, Georgia-Augusta-University Goettingen"This textbook represents an exciting and timely project highlighting the importance of non-Euclidean data across different scientific applications. It uses numerous examples to motivate this scientific approach, to engage researchers from different backgrounds and experiences. The textbook starts by introducing OODA–overview, contexts, and preliminaries. The main focus of the textbook is on statistical case studies driven by non-Euclidean data. The principal component analysis is frequently used as a primary data analysis tool, extracting interesting patterns from the data. Then the textbook moves into specific methods – distance-based methods, visualizations, shapes, curves, and trees. In the last part, the manuscript focuses on pattern analysis techniques – clustering, classification, smoothing, and asymptotics. I strongly recommend the publication of this textbook. This manuscript covers important and fast-developing topic areas that are important in many applications."-Anuj Srivastava, Florida State University"(...) this monograph is destined, without doubt, to become the classic introductory text on OODA. Graduate students contemplating research in statistics and/or data science who have studied introductory courses in multivariate analysis and smoothing and robust methods will find it a gentle introduction, and also an inspiring one because it identifies many areas of the field that are in their infancy and which need to be more fully developed. It also provides great insight into how classical methods perform in not so standard setups, particularly for high dimensional data, and describes alternatives to them having enhanced performance. Its extensive bibliography constitutes an essential resource for those embarking on research into statistical and data science methodology for contexts involving complex data."-Arthur Pewsey, in Journal of the Royal Statistical Society, Series A, March 2022"In this research monograph, two leading researchers, Marron and Dryden, provide a comprehensive overview of a field they have helped to build, which they term object oriented data analysis (OODA). [...] This work is a culmination of the authors last three decades of work and represents a welcome addition to the literature."-Debashis Ghosh, in International Statistical Review, September 2024 Review Quote I wrote a report last year on an earlier draft of the book. I was enthusiastic then and I remain so. I can see the book being very popular both with graduate students and with more advanced researchers in disciplines such as Statistics, Biology, Computer Science and Engineering. There is lots of common sense advice, a lot of informative graphs, and not too much theory...I regard the manuscript as a breath of fresh air in an area where there can be a tendency to make the material overly technical." - John Kent , University of Leeds "We need this book badly in statistics. This field, like most in the mathematical sciences tends to generate a literature that offers more and more exposition of research on less and less. The authors say this well in their first two pages, where they point out how much of statistical practice, literature and software assumes data in the form of a two-dimensional table. As in functional data analysis, the theoreticians will sniff and grouch about the lack of theory, but this quickly follows as they see the opportunities for more intense mathematical effort in the area. Both authors are high levels theoreticians in their own right." - Jim Ramsay , McGill University "The chapters I have read are very informative and convey the deep insight of two senior specialists in the field. This is very valuable, especially for younger scientists that want to quickly grasp the fundamentals of the field...The particular strength of this book is that is connects classical statistics, "classical" machine learning and statistics on non-Euclidean spaces with one another...This is a book I have been waiting for and I love to read it in detail and profit from it for research and teaching, once it is finished." - Stephan F. Huckemann , Georgia-Augusta-University Goettingen "This textbook represents an exciting and timely project highlighting the importance of non-Euclidean data across different scientific applications. It uses numerous examples to motivate this scientific approach, to engage researchers from different backgrounds and experiences. The textbook starts by introducing OODA-overview, contexts, and preliminaries. The main focus of the textbook is on statistical case studies driven by non-Euclidean data. The principal component analysis is frequently used as a primary data analysis tool, extracting interesting patterns from the data. Then the textbook moves into specific methods - distance-based methods, visualizations, shapes, curves, and trees. In the last part, the manuscript focuses on pattern analysis techniques - clustering, classification, smoothing, and asymptotics. I strongly recommend the publication of this textbook. This manuscript covers important and fast-developing topic areas that are important in many applications." - Anuj Srivastava , Florida State University "(...) this monograph is destined, without doubt, to become the classic introductory text on OODA. Graduate students contemplating research in statistics and/or data science who have studied introductory courses in multivariate analysis and smoothing and robust methods will find it a gentle introduction, and also an inspiring one because it identifies many areas of the field that are in their infancy and which need to be more fully developed. It also provides great insight into how classical methods perform in not so standard setups, particularly for high dimensional data, and describes alternatives to them having enhanced performance. Its extensive bibliography constitutes an essential resource for those embarking on research into statistical and data science methodology for contexts involving complex data." -Arthur Pewsey, in Journal of the Royal Statistical Society, Series A, March 2022 Details ISBN0815392826 Author Ian L. Dryden Publisher Taylor & Francis Inc Year 2021 ISBN-10 0815392826 ISBN-13 9780815392828 Format Hardcover Imprint CRC Press Inc Place of Publication Bosa Roca Country of Publication United States Pages 424 AU Release Date 2021-11-24 NZ Release Date 2021-11-24 US Release Date 2021-11-24 Publication Date 2021-11-24 UK Release Date 2021-11-24 Illustrations 13 Tables, black and white; 196 Halftones, color; 196 Illustrations, color Series Chapman & Hall/CRC Monographs on Statistics and Applied Probability DEWEY 005.117 Audience Professional & Vocational Alternative 9781032114804 We've got this At The Nile, if you're looking for it, we've got it. With fast shipping, low prices, friendly service and well over a million items - you're bound to find what you want, at a price you'll love! 30 DAY RETURN POLICY No questions asked, 30 day returns! FREE DELIVERY No matter where you are in the UK, delivery is free. SECURE PAYMENT Peace of mind by paying through PayPal and eBay Buyer Protection TheNile_Item_ID:133964680;

Price: 148.35 GBP

Location: London

End Time: 2024-12-07T18:40:28.000Z

Shipping Cost: 8.78 GBP

Product Images

Object Oriented Data Analysis by J.S. Marron Hardcover Book

Item Specifics

Return postage will be paid by: Buyer

Returns Accepted: Returns Accepted

After receiving the item, your buyer should cancel the purchase within: 30 days

Return policy details:

ISBN-13: 9780815392828

Book Title: Object Oriented Data Analysis

Item Height: 234 mm

Item Width: 156 mm

Series: Chapman & Hall/Crc Monographs on Statistics and Applied Probability

Author: Ian L. Dryden, J. S. Marron

Publication Name: Object Oriented Data Analysis

Format: Hardcover

Language: English

Publisher: Taylor & Francis INC International Concepts

Subject: Computer Science

Publication Year: 2021

Type: Textbook

Number of Pages: 424 Pages

Recommended

Object-Oriented Software Construction (Book/CD-ROM) (2nd Edition) - GOOD
Object-Oriented Software Construction (Book/CD-ROM) (2nd Edition) - GOOD

$7.22

View Details
The Principles of Object-Oriented JavaScript - Paperback - GOOD
The Principles of Object-Oriented JavaScript - Paperback - GOOD

$5.90

View Details
The Object-Oriented Thought Process - Paperback By Weisfeld, Matt - VERY GOOD
The Object-Oriented Thought Process - Paperback By Weisfeld, Matt - VERY GOOD

$4.39

View Details
Object-Oriented Software Engineering: an Agile Unified Methodology by David...
Object-Oriented Software Engineering: an Agile Unified Methodology by David...

$30.00

View Details
Real-Time Object-Oriented Modeling - Hardcover By Selic, Bran - GOOD
Real-Time Object-Oriented Modeling - Hardcover By Selic, Bran - GOOD

$5.03

View Details
Java Methods A & Ab: Object-oriented Programming and Data Structures
Java Methods A & Ab: Object-oriented Programming and Data Structures

$6.44

View Details
Object-Oriented Software Construction
Object-Oriented Software Construction

$5.80

View Details
Python 3 Object Oriented Programming: Harness the Power of Python 3 Objects, Phi
Python 3 Object Oriented Programming: Harness the Power of Python 3 Objects, Phi

$51.09

View Details
Object-Oriented and Classical Software Engineering Hardcover Step
Object-Oriented and Classical Software Engineering Hardcover Step

$11.17

View Details
Practical Object-Oriented Design : An Agile Primer Using Ruby 2nd Edition (2019)
Practical Object-Oriented Design : An Agile Primer Using Ruby 2nd Edition (2019)

$19.95

View Details