Computational Methods for Manifold Learning

Computational Methods for Manifold Learning

Author: Xin Yang

Publisher:

Published: 2007

Total Pages: 132

ISBN-13:

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In many real world applications, data samples lying in a high dimensional ambient space can be modeled by very low dimensional nonlinear manifolds. Manifold learning, as a new framework of machine learning, discovers this low dimensional structure from the collection of the high dimensional data. In this thesis, some novel manifold learning methods are proposed, including conical dimension, semi-supervised nonlinear dimensionality reduction, active learning for the semi-supervised manifold learning, and mesh-free manifold learning. {it Conical dimension} is proposed as a novel local intrinsic dimension estimator, for estimating the intrinsic dimension of a data set consisting of points lying in the proximity of a manifold. It can also be applied to intersection and boundary detection. The accuracy and robustness of the algorithm are illustrated by both synthetic and real-world data experiments. Both synthetic and real life examples are shown. We propose the {it semi-supervised nonlinear dimensionality reduction} by introducing the prior information into basic nonlinear dimensionality reduction method, such as LLE and LTSA. The sensitivity analysis of our algorithms shows that prior information will improve the stability of the solution. We demonstrate the usefulness of our algorithm by synthetic and real life examples. A principled approach for selecting the data points for labeling used in semi-supervised manifold learning is proposed as {it active learning} method. Experiments on both synthetic and real-world problems show that our proposed methods can substantially improve the accuracy of the computed global parameterizations over several alternative methods. In the last section, we propose an alternative dimensionality reduction method, namely mesh-free manifold learning, which introduce the phase field models into dimensionality reduction problem to track the data movement during the time step of the dimensionality reduction procedure.


Computational Methods for Deep Learning

Computational Methods for Deep Learning

Author: Wei Qi Yan

Publisher: Springer Nature

Published: 2020-12-04

Total Pages: 134

ISBN-13: 3030610810

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Integrating concepts from deep learning, machine learning, and artificial neural networks, this highly unique textbook presents content progressively from easy to more complex, orienting its content about knowledge transfer from the viewpoint of machine intelligence. It adopts the methodology from graphical theory, mathematical models, and algorithmic implementation, as well as covers datasets preparation, programming, results analysis and evaluations. Beginning with a grounding about artificial neural networks with neurons and the activation functions, the work then explains the mechanism of deep learning using advanced mathematics. In particular, it emphasizes how to use TensorFlow and the latest MATLAB deep-learning toolboxes for implementing deep learning algorithms. As a prerequisite, readers should have a solid understanding especially of mathematical analysis, linear algebra, numerical analysis, optimizations, differential geometry, manifold, and information theory, as well as basic algebra, functional analysis, and graphical models. This computational knowledge will assist in comprehending the subject matter not only of this text/reference, but also in relevant deep learning journal articles and conference papers. This textbook/guide is aimed at Computer Science research students and engineers, as well as scientists interested in deep learning for theoretic research and analysis. More generally, this book is also helpful for those researchers who are interested in machine intelligence, pattern analysis, natural language processing, and machine vision. Dr. Wei Qi Yan is an Associate Professor in the Department of Computer Science at Auckland University of Technology, New Zealand. His other publications include the Springer title, Visual Cryptography for Image Processing and Security.


Python Data Science Handbook

Python Data Science Handbook

Author: Jake VanderPlas

Publisher: "O'Reilly Media, Inc."

Published: 2016-11-21

Total Pages: 743

ISBN-13: 1491912138

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For many researchers, Python is a first-class tool mainly because of its libraries for storing, manipulating, and gaining insight from data. Several resources exist for individual pieces of this data science stack, but only with the Python Data Science Handbook do you get them all—IPython, NumPy, Pandas, Matplotlib, Scikit-Learn, and other related tools. Working scientists and data crunchers familiar with reading and writing Python code will find this comprehensive desk reference ideal for tackling day-to-day issues: manipulating, transforming, and cleaning data; visualizing different types of data; and using data to build statistical or machine learning models. Quite simply, this is the must-have reference for scientific computing in Python. With this handbook, you’ll learn how to use: IPython and Jupyter: provide computational environments for data scientists using Python NumPy: includes the ndarray for efficient storage and manipulation of dense data arrays in Python Pandas: features the DataFrame for efficient storage and manipulation of labeled/columnar data in Python Matplotlib: includes capabilities for a flexible range of data visualizations in Python Scikit-Learn: for efficient and clean Python implementations of the most important and established machine learning algorithms


Manifold Learning Theory and Applications

Manifold Learning Theory and Applications

Author: Yunqian Ma

Publisher: CRC Press

Published: 2011-12-20

Total Pages: 410

ISBN-13: 1466558873

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Trained to extract actionable information from large volumes of high-dimensional data, engineers and scientists often have trouble isolating meaningful low-dimensional structures hidden in their high-dimensional observations. Manifold learning, a groundbreaking technique designed to tackle these issues of dimensionality reduction, finds widespread


Modern Multidimensional Scaling

Modern Multidimensional Scaling

Author: Ingwer Borg

Publisher: Springer Science & Business Media

Published: 2013-04-18

Total Pages: 469

ISBN-13: 1475727119

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Multidimensional scaling (MDS) is a technique for the analysis of similarity or dissimilarity data on a set of objects. Such data may be intercorrelations of test items, ratings of similarity on political candidates, or trade indices for a set of countries. MDS attempts to model such data as distances among points in a geometric space. The main reason for doing this is that one wants a graphical display of the structure of the data, one that is much easier to understand than an array of numbers and, moreover, one that displays the essential information in the data, smoothing out noise. There are numerous varieties of MDS. Some facets for distinguishing among them are the particular type of geometry into which one wants to map the data, the mapping function, the algorithms used to find an optimal data representation, the treatment of statistical error in the models, or the possibility to represent not just one but several similarity matrices at the same time. Other facets relate to the different purposes for which MDS has been used, to various ways of looking at or "interpreting" an MDS representation, or to differences in the data required for the particular models. In this book, we give a fairly comprehensive presentation of MDS. For the reader with applied interests only, the first six chapters of Part I should be sufficient. They explain the basic notions of ordinary MDS, with an emphasis on how MDS can be helpful in answering substantive questions.


Machine Learning Algorithms for Problem Solving in Computational Applications: Intelligent Techniques

Machine Learning Algorithms for Problem Solving in Computational Applications: Intelligent Techniques

Author: Kulkarni, Siddhivinayak

Publisher: IGI Global

Published: 2012-06-30

Total Pages: 464

ISBN-13: 1466618345

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Machine learning is an emerging area of computer science that deals with the design and development of new algorithms based on various types of data. Machine Learning Algorithms for Problem Solving in Computational Applications: Intelligent Techniques addresses the complex realm of machine learning and its applications for solving various real-world problems in a variety of disciplines, such as manufacturing, business, information retrieval, and security. This premier reference source is essential for professors, researchers, and students in artificial intelligence as well as computer science and engineering.


Numerical Algorithms

Numerical Algorithms

Author: Justin Solomon

Publisher: CRC Press

Published: 2015-06-24

Total Pages: 400

ISBN-13: 1482251892

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Numerical Algorithms: Methods for Computer Vision, Machine Learning, and Graphics presents a new approach to numerical analysis for modern computer scientists. Using examples from a broad base of computational tasks, including data processing, computational photography, and animation, the textbook introduces numerical modeling and algorithmic desig


Computational Methods for Deep Learning

Computational Methods for Deep Learning

Author: Wei Qi Yan

Publisher: Springer Nature

Published: 2023-10-17

Total Pages: 235

ISBN-13: 9819948231

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The first edition of this textbook was published in 2021. Over the past two years, we have invested in enhancing all aspects of deep learning methods to ensure the book is comprehensive and impeccable. Taking into account feedback from our readers and audience, the author has diligently updated this book. The second edition of this textbook presents control theory, transformer models, and graph neural networks (GNN) in deep learning. We have incorporated the latest algorithmic advances and large-scale deep learning models, such as GPTs, to align with the current research trends. Through the second edition, this book showcases how computational methods in deep learning serve as a dynamic driving force in this era of artificial intelligence (AI). This book is intended for research students, engineers, as well as computer scientists with interest in computational methods in deep learning. Furthermore, it is also well-suited for researchers exploring topics such as machine intelligence, robotic control, and related areas.


Numerical Analysis meets Machine Learning

Numerical Analysis meets Machine Learning

Author:

Publisher: Elsevier

Published: 2024-06-13

Total Pages: 590

ISBN-13: 0443239851

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Numerical Analysis Meets Machine Learning series, highlights new advances in the field, with this new volume presenting interesting chapters. Each chapter is written by an international board of authors. Provides the authority and expertise of leading contributors from an international board of authors Presents the latest release in the Handbook of Numerical Analysis series Updated release includes the latest information on the Numerical Analysis Meets Machine Learning