Linear algebra with machine learning and data. (2023)
- Record Type:
- Book
- Title:
- Linear algebra with machine learning and data. (2023)
- Main Title:
- Linear algebra with machine learning and data
- Further Information:
- Note: Crista Arangala.
- Authors:
- Arangala, Crista
- Contents:
- Acknowledgments Introduction; 1 Graph Theory 1.1 Basic Terminology 1.2 The Power of the Adjacency Matrix 1.3 Eigenvalues and Eigenvectors as Key Players 1.4 CASE STUDY: Applications in Sport Ranking 1.5 CASE STUDY: Gerrymandering 1.6 Exercises; 2. Stochastic Processes 2.1 Markov Chain Basics 2.2 Hidden Markov Models 2.2.1 The Likelihood Problem 2.2.2 The Decoding Problem 2.2.3 The Learning Problem 2.3 CASE STUDY: Spread of Infectious Disease 2.4 CASE STUDY: Text Analysis and Autocorrect 2.5 CASE STUDY: Tweets and Time Series 2.6 Exercises; 3. SVD and PCA 3.1 Vector and Inner Product Spaces 3.2 Singular Values 3.3 Singular Value Decomposition 3.4 Compression of Data Using Principal Component Analysis (PCA) 3.5 PCA, Covariance, and Correlation 3.6 Linear Discriminant Analysis 3.7 CASE STUDY: Digital Humanities 3.8 CASE STUDY: Facial Recognition Using PCA and LDA 3.9 Exercises; 4. Interpolation 4.1 Lagrange Interpolation 4.2 Orthogonal Families of Polynomials 4.3 Newton’s Divided Difference 4.3.1 Newton’s interpolation via divided difference 4.3.2 Newton’s interpolation via the Vandermonde matrix 4.4 Chebyshev interpolation 4.5 Hermite interpolation 4.6 Least Squares Regression 4.7 CASE STUDY : Chebyshev Polynomials and Cryptography 4.8 CASE STUDY: Racial Disparities in Marijuana Arrests 4.9 CASE STUDY : Interpolation in Higher Education Data 4.10 Exercises; 5. Optimization and Learning Techniques for Regression 5.1 Basics of Probability Theory 5.2 Introduction to MatrixAcknowledgments Introduction; 1 Graph Theory 1.1 Basic Terminology 1.2 The Power of the Adjacency Matrix 1.3 Eigenvalues and Eigenvectors as Key Players 1.4 CASE STUDY: Applications in Sport Ranking 1.5 CASE STUDY: Gerrymandering 1.6 Exercises; 2. Stochastic Processes 2.1 Markov Chain Basics 2.2 Hidden Markov Models 2.2.1 The Likelihood Problem 2.2.2 The Decoding Problem 2.2.3 The Learning Problem 2.3 CASE STUDY: Spread of Infectious Disease 2.4 CASE STUDY: Text Analysis and Autocorrect 2.5 CASE STUDY: Tweets and Time Series 2.6 Exercises; 3. SVD and PCA 3.1 Vector and Inner Product Spaces 3.2 Singular Values 3.3 Singular Value Decomposition 3.4 Compression of Data Using Principal Component Analysis (PCA) 3.5 PCA, Covariance, and Correlation 3.6 Linear Discriminant Analysis 3.7 CASE STUDY: Digital Humanities 3.8 CASE STUDY: Facial Recognition Using PCA and LDA 3.9 Exercises; 4. Interpolation 4.1 Lagrange Interpolation 4.2 Orthogonal Families of Polynomials 4.3 Newton’s Divided Difference 4.3.1 Newton’s interpolation via divided difference 4.3.2 Newton’s interpolation via the Vandermonde matrix 4.4 Chebyshev interpolation 4.5 Hermite interpolation 4.6 Least Squares Regression 4.7 CASE STUDY : Chebyshev Polynomials and Cryptography 4.8 CASE STUDY: Racial Disparities in Marijuana Arrests 4.9 CASE STUDY : Interpolation in Higher Education Data 4.10 Exercises; 5. Optimization and Learning Techniques for Regression 5.1 Basics of Probability Theory 5.2 Introduction to Matrix Calculus 5.2.1 Matrix Differentiation 5.2.2 Matrix Integration 5.3 Maximum Likelihood Estimation 5.4 Gradient Descent Method 5.5 Introduction to Neural Networks 5.5.1 The Learning Process 5.5.2 Sigmoid Activation Functions 5.5.3 Radial Activation Functions 5.6 CASE STUDY: Handwriting Digit Recognition 5.7 CASE STUDY: Poisson Regression and COVID Counts 5.8 Exercises; 6 Decision Trees and Random Forests 6.1 Decision Trees 6.1.1 Decision Trees Regression 6.2 Regression Trees 6.3 Random Decision Trees and Forests 6.4 CASE STUDY: Entropy of Wordle 6.5 CASE STUDY : Bird Call Identification 6.6 Exercises; 7. Random Matrices and Covariance Estimate 7.1 Introduction to Random Matrices 7.2 Stability 7.3 Gaussian Orthogonal Ensemble 7.4 Gaussian Unitary Ensemble 7.5 Gaussian Symplectic Ensemble 7.6 Random Matrices and the Relationship to the Covariance 7.7 CASE STUDY: Finance and Brownian Motion 7.8 CASE STUDY: Random Matrices in Gene Interaction 7.9 Exercises; 8. Sample Solutions to Exercises 8.1 Chapter 1 8.2 Chapter 2 8.3 Chapter 3 8.4 Chapter 4 8.5 Chapter 5 8.6 Chapter 6 8.7 Chapter 7; Github Links 349 Bibliography 351 Index 355 … (more)
- Edition:
- 1st
- Publisher Details:
- Boca Raton : Chapman & Hall/CRC
- Publication Date:
- 2023
- Extent:
- 1 online resource (366 pages), illustrations (black and white)
- Subjects:
- 512.50285
Algebras, Linear -- Textbooks
Machine learning -- Mathematics -- Textbooks
Data mining -- Mathematics -- Textbooks - Languages:
- English
- ISBNs:
- 9781000856200
9781000856163 - Related ISBNs:
- 9780367458393
- Notes:
- Note: Includes bibliographical references and index.
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- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
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- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
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- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.772811
- Ingest File:
- 19_019.xml