Principal Component Analysis
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Author |
: I.T. Jolliffe |
Publisher |
: Springer Science & Business Media |
Total Pages |
: 283 |
Release |
: 2013-03-09 |
ISBN-10 |
: 9781475719048 |
ISBN-13 |
: 1475719043 |
Rating |
: 4/5 (48 Downloads) |
Synopsis Principal Component Analysis by : I.T. Jolliffe
Principal component analysis is probably the oldest and best known of the It was first introduced by Pearson (1901), techniques ofmultivariate analysis. and developed independently by Hotelling (1933). Like many multivariate methods, it was not widely used until the advent of electronic computers, but it is now weIl entrenched in virtually every statistical computer package. The central idea of principal component analysis is to reduce the dimen sionality of a data set in which there are a large number of interrelated variables, while retaining as much as possible of the variation present in the data set. This reduction is achieved by transforming to a new set of variables, the principal components, which are uncorrelated, and which are ordered so that the first few retain most of the variation present in all of the original variables. Computation of the principal components reduces to the solution of an eigenvalue-eigenvector problem for a positive-semidefinite symmetrie matrix. Thus, the definition and computation of principal components are straightforward but, as will be seen, this apparently simple technique has a wide variety of different applications, as weIl as a number of different deri vations. Any feelings that principal component analysis is a narrow subject should soon be dispelled by the present book; indeed some quite broad topics which are related to principal component analysis receive no more than a brief mention in the final two chapters.
Author |
: René Vidal |
Publisher |
: Springer |
Total Pages |
: 590 |
Release |
: 2016-04-11 |
ISBN-10 |
: 9780387878119 |
ISBN-13 |
: 0387878114 |
Rating |
: 4/5 (19 Downloads) |
Synopsis Generalized Principal Component Analysis by : René Vidal
This book provides a comprehensive introduction to the latest advances in the mathematical theory and computational tools for modeling high-dimensional data drawn from one or multiple low-dimensional subspaces (or manifolds) and potentially corrupted by noise, gross errors, or outliers. This challenging task requires the development of new algebraic, geometric, statistical, and computational methods for efficient and robust estimation and segmentation of one or multiple subspaces. The book also presents interesting real-world applications of these new methods in image processing, image and video segmentation, face recognition and clustering, and hybrid system identification etc. This book is intended to serve as a textbook for graduate students and beginning researchers in data science, machine learning, computer vision, image and signal processing, and systems theory. It contains ample illustrations, examples, and exercises and is made largely self-contained with three Appendices which survey basic concepts and principles from statistics, optimization, and algebraic-geometry used in this book. René Vidal is a Professor of Biomedical Engineering and Director of the Vision Dynamics and Learning Lab at The Johns Hopkins University. Yi Ma is Executive Dean and Professor at the School of Information Science and Technology at ShanghaiTech University. S. Shankar Sastry is Dean of the College of Engineering, Professor of Electrical Engineering and Computer Science and Professor of Bioengineering at the University of California, Berkeley.
Author |
: Ganesh R. Naik |
Publisher |
: Springer |
Total Pages |
: 256 |
Release |
: 2017-12-11 |
ISBN-10 |
: 9789811067044 |
ISBN-13 |
: 981106704X |
Rating |
: 4/5 (44 Downloads) |
Synopsis Advances in Principal Component Analysis by : Ganesh R. Naik
This book reports on the latest advances in concepts and further developments of principal component analysis (PCA), addressing a number of open problems related to dimensional reduction techniques and their extensions in detail. Bringing together research results previously scattered throughout many scientific journals papers worldwide, the book presents them in a methodologically unified form. Offering vital insights into the subject matter in self-contained chapters that balance the theory and concrete applications, and especially focusing on open problems, it is essential reading for all researchers and practitioners with an interest in PCA.
Author |
: Alboukadel KASSAMBARA |
Publisher |
: STHDA |
Total Pages |
: 171 |
Release |
: 2017-08-23 |
ISBN-10 |
: 9781975721138 |
ISBN-13 |
: 1975721136 |
Rating |
: 4/5 (38 Downloads) |
Synopsis Practical Guide To Principal Component Methods in R by : Alboukadel KASSAMBARA
Although there are several good books on principal component methods (PCMs) and related topics, we felt that many of them are either too theoretical or too advanced. This book provides a solid practical guidance to summarize, visualize and interpret the most important information in a large multivariate data sets, using principal component methods in R. The visualization is based on the factoextra R package that we developed for creating easily beautiful ggplot2-based graphs from the output of PCMs. This book contains 4 parts. Part I provides a quick introduction to R and presents the key features of FactoMineR and factoextra. Part II describes classical principal component methods to analyze data sets containing, predominantly, either continuous or categorical variables. These methods include: Principal Component Analysis (PCA, for continuous variables), simple correspondence analysis (CA, for large contingency tables formed by two categorical variables) and Multiple CA (MCA, for a data set with more than 2 categorical variables). In Part III, you'll learn advanced methods for analyzing a data set containing a mix of variables (continuous and categorical) structured or not into groups: Factor Analysis of Mixed Data (FAMD) and Multiple Factor Analysis (MFA). Part IV covers hierarchical clustering on principal components (HCPC), which is useful for performing clustering with a data set containing only categorical variables or with a mixed data of categorical and continuous variables.
Author |
: George H. Dunteman |
Publisher |
: SAGE |
Total Pages |
: 98 |
Release |
: 1989-05 |
ISBN-10 |
: 0803931042 |
ISBN-13 |
: 9780803931046 |
Rating |
: 4/5 (42 Downloads) |
Synopsis Principal Components Analysis by : George H. Dunteman
For anyone in need of a concise, introductory guide to principal components analysis, this book is a must. Through an effective use of simple mathematical-geometrical and multiple real-life examples (such as crime statistics, indicators of drug abuse, and educational expenditures) -- and by minimizing the use of matrix algebra -- the reader can quickly master and put this technique to immediate use.
Author |
: J. Edward Jackson |
Publisher |
: John Wiley & Sons |
Total Pages |
: 597 |
Release |
: 2005-01-21 |
ISBN-10 |
: 9780471725329 |
ISBN-13 |
: 0471725323 |
Rating |
: 4/5 (29 Downloads) |
Synopsis A User's Guide to Principal Components by : J. Edward Jackson
WILEY-INTERSCIENCE PAPERBACK SERIES The Wiley-Interscience Paperback Series consists of selected books that have been made more accessible to consumers in an effort to increase global appeal and general circulation. With these new unabridged softcover volumes, Wiley hopes to extend the lives of these works by making them available to future generations of statisticians, mathematicians, and scientists. From the Reviews of A User’s Guide to Principal Components "The book is aptly and correctly named–A User’s Guide. It is the kind of book that a user at any level, novice or skilled practitioner, would want to have at hand for autotutorial, for refresher, or as a general-purpose guide through the maze of modern PCA." –Technometrics "I recommend A User’s Guide to Principal Components to anyone who is running multivariate analyses, or who contemplates performing such analyses. Those who write their own software will find the book helpful in designing better programs. Those who use off-the-shelf software will find it invaluable in interpreting the results." –Mathematical Geology
Author |
: Steven L. Brunton |
Publisher |
: Cambridge University Press |
Total Pages |
: 615 |
Release |
: 2022-05-05 |
ISBN-10 |
: 9781009098489 |
ISBN-13 |
: 1009098489 |
Rating |
: 4/5 (89 Downloads) |
Synopsis Data-Driven Science and Engineering by : Steven L. Brunton
A textbook covering data-science and machine learning methods for modelling and control in engineering and science, with Python and MATLAB®.
Author |
: Pratap Dangeti |
Publisher |
: Packt Publishing Ltd |
Total Pages |
: 438 |
Release |
: 2017-07-21 |
ISBN-10 |
: 9781788291224 |
ISBN-13 |
: 1788291220 |
Rating |
: 4/5 (24 Downloads) |
Synopsis Statistics for Machine Learning by : Pratap Dangeti
Build Machine Learning models with a sound statistical understanding. About This Book Learn about the statistics behind powerful predictive models with p-value, ANOVA, and F- statistics. Implement statistical computations programmatically for supervised and unsupervised learning through K-means clustering. Master the statistical aspect of Machine Learning with the help of this example-rich guide to R and Python. Who This Book Is For This book is intended for developers with little to no background in statistics, who want to implement Machine Learning in their systems. Some programming knowledge in R or Python will be useful. What You Will Learn Understand the Statistical and Machine Learning fundamentals necessary to build models Understand the major differences and parallels between the statistical way and the Machine Learning way to solve problems Learn how to prepare data and feed models by using the appropriate Machine Learning algorithms from the more-than-adequate R and Python packages Analyze the results and tune the model appropriately to your own predictive goals Understand the concepts of required statistics for Machine Learning Introduce yourself to necessary fundamentals required for building supervised & unsupervised deep learning models Learn reinforcement learning and its application in the field of artificial intelligence domain In Detail Complex statistics in Machine Learning worry a lot of developers. Knowing statistics helps you build strong Machine Learning models that are optimized for a given problem statement. This book will teach you all it takes to perform complex statistical computations required for Machine Learning. You will gain information on statistics behind supervised learning, unsupervised learning, reinforcement learning, and more. Understand the real-world examples that discuss the statistical side of Machine Learning and familiarize yourself with it. You will also design programs for performing tasks such as model, parameter fitting, regression, classification, density collection, and more. By the end of the book, you will have mastered the required statistics for Machine Learning and will be able to apply your new skills to any sort of industry problem. Style and approach This practical, step-by-step guide will give you an understanding of the Statistical and Machine Learning fundamentals you'll need to build models.
Author |
: Rudolph W. Preisendorfer |
Publisher |
: |
Total Pages |
: 452 |
Release |
: 1988 |
ISBN-10 |
: UCSD:31822034216630 |
ISBN-13 |
: |
Rating |
: 4/5 (30 Downloads) |
Synopsis Principal Component Analysis in Meteorology and Oceanography by : Rudolph W. Preisendorfer
Author |
: John Winn |
Publisher |
: CRC Press |
Total Pages |
: 469 |
Release |
: 2023-11-30 |
ISBN-10 |
: 9781498756822 |
ISBN-13 |
: 1498756824 |
Rating |
: 4/5 (22 Downloads) |
Synopsis Model-Based Machine Learning by : John Winn
Today, machine learning is being applied to a growing variety of problems in a bewildering variety of domains. A fundamental challenge when using machine learning is connecting the abstract mathematics of a machine learning technique to a concrete, real world problem. This book tackles this challenge through model-based machine learning which focuses on understanding the assumptions encoded in a machine learning system and their corresponding impact on the behaviour of the system. The key ideas of model-based machine learning are introduced through a series of case studies involving real-world applications. Case studies play a central role because it is only in the context of applications that it makes sense to discuss modelling assumptions. Each chapter introduces one case study and works through step-by-step to solve it using a model-based approach. The aim is not just to explain machine learning methods, but also showcase how to create, debug, and evolve them to solve a problem. Features: Explores the assumptions being made by machine learning systems and the effect these assumptions have when the system is applied to concrete problems. Explains machine learning concepts as they arise in real-world case studies. Shows how to diagnose, understand and address problems with machine learning systems. Full source code available, allowing models and results to be reproduced and explored. Includes optional deep-dive sections with more mathematical details on inference algorithms for the interested reader.