Feature Extraction, Construction and Selection

Feature Extraction, Construction and Selection

Author: Huan Liu

Publisher: Springer Science & Business Media

Published: 2012-12-06

Total Pages: 418

ISBN-13: 1461557259

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There is broad interest in feature extraction, construction, and selection among practitioners from statistics, pattern recognition, and data mining to machine learning. Data preprocessing is an essential step in the knowledge discovery process for real-world applications. This book compiles contributions from many leading and active researchers in this growing field and paints a picture of the state-of-art techniques that can boost the capabilities of many existing data mining tools. The objective of this collection is to increase the awareness of the data mining community about the research of feature extraction, construction and selection, which are currently conducted mainly in isolation. This book is part of our endeavor to produce a contemporary overview of modern solutions, to create synergy among these seemingly different branches, and to pave the way for developing meta-systems and novel approaches. Even with today's advanced computer technologies, discovering knowledge from data can still be fiendishly hard due to the characteristics of the computer generated data. Feature extraction, construction and selection are a set of techniques that transform and simplify data so as to make data mining tasks easier. Feature construction and selection can be viewed as two sides of the representation problem.


Feature Extraction

Feature Extraction

Author: Isabelle Guyon

Publisher: Springer

Published: 2008-11-16

Total Pages: 765

ISBN-13: 3540354883

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This book is both a reference for engineers and scientists and a teaching resource, featuring tutorial chapters and research papers on feature extraction. Until now there has been insufficient consideration of feature selection algorithms, no unified presentation of leading methods, and no systematic comparisons.


Unsupervised Feature Extraction Applied to Bioinformatics

Unsupervised Feature Extraction Applied to Bioinformatics

Author: Y-h. Taguchi

Publisher: Springer Nature

Published: 2019-08-23

Total Pages: 321

ISBN-13: 3030224562

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This book proposes applications of tensor decomposition to unsupervised feature extraction and feature selection. The author posits that although supervised methods including deep learning have become popular, unsupervised methods have their own advantages. He argues that this is the case because unsupervised methods are easy to learn since tensor decomposition is a conventional linear methodology. This book starts from very basic linear algebra and reaches the cutting edge methodologies applied to difficult situations when there are many features (variables) while only small number of samples are available. The author includes advanced descriptions about tensor decomposition including Tucker decomposition using high order singular value decomposition as well as higher order orthogonal iteration, and train tenor decomposition. The author concludes by showing unsupervised methods and their application to a wide range of topics. Allows readers to analyze data sets with small samples and many features; Provides a fast algorithm, based upon linear algebra, to analyze big data; Includes several applications to multi-view data analyses, with a focus on bioinformatics.


Feature Selection and Extraction

Feature Selection and Extraction

Author: Swair Rajesh Shah

Publisher:

Published: 2019

Total Pages:

ISBN-13:

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Feature selection is a very important process in statistics and machine learning. It removes redundant and irrelevant features and selects the most useful set of features from a given dataset. This tends to improve generalization of machine learning algorithms and reduces training time. Feature selection is used to make the models more interpretable. Recently it has been also used to reduce bias of such models and ensure fairness of the outcome. Feature extraction is another dimensionality reduction process which finds a small set of features to approximate a given dataset. Unlike feature selection in extraction the resulting features can be arbitrary functions of the features in the original dataset. There are fast algorithms to compute feature extraction but it doesn’t provide the interpretability aspect of feature selection and it tends to be less effective than feature selection in making models generalize better. One of the problems addressed in this dissertation is a hybrid problem which combines feature selection and extraction. This hybrid problem is at least as hard as feature selection which is known to be NP-hard. We show how simplistic sequential application of optimal selection and extraction does not provide an optimal solution for this problem. We develop an algorithm to solve the hybrid problem optimally using methods inspired by the classic A* search algorithm. One of the most widely used feature extraction methods is the Principal Component Analysis (PCA). It is known to be very sensitive to the outliers in the data. There have been various attempts in the literature to address this issue none promising an optimal solution to the problem. We model this problem as a graph search problem and again apply our heuristic search framework to design an algorithm which solves this problem optimally. We show that we compare favorably to the state-of-the-art convex relaxation approach. PCA is closely tied to a very popular linear algebra problem called the eigenvalue problem. The third part of the dissertation uses the eigenvalue problem and a variant of it known as the generalized eigenvalue problem to achieve the privacy of the user data. Today there are many companies which provide predictive models as services. In order to use these services one needs to send one’s data to such a service for prediction or inference. It is possible that this data can be used to infer some confidential information about the data sender. We design algorithms to apply transformations to this data so that the inference of the confidential information is prevented while the data can still be used to infer the desired information.


Introduction To Pattern Recognition And Machine Learning

Introduction To Pattern Recognition And Machine Learning

Author: M Narasimha Murty

Publisher: World Scientific

Published: 2015-04-22

Total Pages: 402

ISBN-13: 9814656275

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This book adopts a detailed and methodological algorithmic approach to explain the concepts of pattern recognition. While the text provides a systematic account of its major topics such as pattern representation and nearest neighbour based classifiers, current topics — neural networks, support vector machines and decision trees — attributed to the recent vast progress in this field are also dealt with. Introduction to Pattern Recognition and Machine Learning will equip readers, especially senior computer science undergraduates, with a deeper understanding of the subject matter.


Spectral Feature Selection for Data Mining (Open Access)

Spectral Feature Selection for Data Mining (Open Access)

Author: Zheng Alan Zhao

Publisher: CRC Press

Published: 2011-12-14

Total Pages: 224

ISBN-13: 1439862109

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Spectral Feature Selection for Data Mining introduces a novel feature selection technique that establishes a general platform for studying existing feature selection algorithms and developing new algorithms for emerging problems in real-world applications. This technique represents a unified framework for supervised, unsupervised, and semisupervise


Medical Image Processing for Improved Clinical Diagnosis

Medical Image Processing for Improved Clinical Diagnosis

Author: Swarnambiga, A.

Publisher: IGI Global

Published: 2018-08-31

Total Pages: 338

ISBN-13: 1522558772

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In the medical field, there is a constant need to improve professionals’ abilities to provide prompt and accurate diagnoses. The use of image and pattern recognizing software may provide support to medical professionals and enhance their abilities to properly identify medical issues. Medical Image Processing for Improved Clinical Diagnosis provides emerging research exploring the theoretical and practical aspects of computer-based imaging and applications within healthcare and medicine. Featuring coverage on a broad range of topics such as biomedical imaging, pattern recognition, and medical diagnosis, this book is ideally designed for medical practitioners, students, researchers, and others in the medical and engineering fields seeking current research on the use of images to enhance the accuracy of medical prognosis.


Computational Methods of Feature Selection

Computational Methods of Feature Selection

Author: Huan Liu

Publisher: CRC Press

Published: 2007-10-29

Total Pages: 437

ISBN-13: 1584888792

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Due to increasing demands for dimensionality reduction, research on feature selection has deeply and widely expanded into many fields, including computational statistics, pattern recognition, machine learning, data mining, and knowledge discovery. Highlighting current research issues, Computational Methods of Feature Selection introduces the


Fundamentals and Methods of Machine and Deep Learning

Fundamentals and Methods of Machine and Deep Learning

Author: Pradeep Singh

Publisher: John Wiley & Sons

Published: 2022-02-01

Total Pages: 480

ISBN-13: 1119821886

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FUNDAMENTALS AND METHODS OF MACHINE AND DEEP LEARNING The book provides a practical approach by explaining the concepts of machine learning and deep learning algorithms, evaluation of methodology advances, and algorithm demonstrations with applications. Over the past two decades, the field of machine learning and its subfield deep learning have played a main role in software applications development. Also, in recent research studies, they are regarded as one of the disruptive technologies that will transform our future life, business, and the global economy. The recent explosion of digital data in a wide variety of domains, including science, engineering, Internet of Things, biomedical, healthcare, and many business sectors, has declared the era of big data, which cannot be analysed by classical statistics but by the more modern, robust machine learning and deep learning techniques. Since machine learning learns from data rather than by programming hard-coded decision rules, an attempt is being made to use machine learning to make computers that are able to solve problems like human experts in the field. The goal of this book is to present a??practical approach by explaining the concepts of machine learning and deep learning algorithms with applications. Supervised machine learning algorithms, ensemble machine learning algorithms, feature selection, deep learning techniques, and their applications are discussed. Also included in the eighteen chapters is unique information which provides a clear understanding of concepts by using algorithms and case studies illustrated with applications of machine learning and deep learning in different domains, including disease prediction, software defect prediction, online television analysis, medical image processing, etc. Each of the chapters briefly described below provides both a chosen approach and its implementation. Audience Researchers and engineers in artificial intelligence, computer scientists as well as software developers.


Prominent Feature Extraction for Sentiment Analysis

Prominent Feature Extraction for Sentiment Analysis

Author: Basant Agarwal

Publisher: Springer

Published: 2015-12-14

Total Pages: 118

ISBN-13: 3319253433

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The objective of this monograph is to improve the performance of the sentiment analysis model by incorporating the semantic, syntactic and common-sense knowledge. This book proposes a novel semantic concept extraction approach that uses dependency relations between words to extract the features from the text. Proposed approach combines the semantic and common-sense knowledge for the better understanding of the text. In addition, the book aims to extract prominent features from the unstructured text by eliminating the noisy, irrelevant and redundant features. Readers will also discover a proposed method for efficient dimensionality reduction to alleviate the data sparseness problem being faced by machine learning model. Authors pay attention to the four main findings of the book : -Performance of the sentiment analysis can be improved by reducing the redundancy among the features. Experimental results show that minimum Redundancy Maximum Relevance (mRMR) feature selection technique improves the performance of the sentiment analysis by eliminating the redundant features. - Boolean Multinomial Naive Bayes (BMNB) machine learning algorithm with mRMR feature selection technique performs better than Support Vector Machine (SVM) classifier for sentiment analysis. - The problem of data sparseness is alleviated by semantic clustering of features, which in turn improves the performance of the sentiment analysis. - Semantic relations among the words in the text have useful cues for sentiment analysis. Common-sense knowledge in form of ConceptNet ontology acquires knowledge, which provides a better understanding of the text that improves the performance of the sentiment analysis.