Linear algebra for data science, machine learning, and signal processing
Material type:
- 9781009418140
- 512.5 FES
Item type | Current library | Call number | Copy number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|
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Indian Institute of Management LRC General Stacks | 1 | Available | 008604 |
Table of contents:
1 - Getting Started
pp 1-11
2 - Introduction to Matrices
pp 12-62
3 - Matrix Factorization: Eigendecomposition and SVD
pp 63-95
4 - Subspaces, Rank, and Nearest-Subspace Classification
pp 96-142
5 - Linear Least-Squares Regression and Binary Classification
pp 143-196
6 - Norms and Procrustes Problems
pp 197-237
7 - Low-Rank Approximation and Multidimensional Scaling
pp 238-282
8 - Special Matrices, Markov Chains, and PageRank
pp 283-334
9 - Optimization Basics and Logistic Regression
pp 335-364
10 - Matrix Completion and Recommender Systems
pp 365-380
11 - Neural Network Models
pp 381-389
12 - Random Matrix Theory, Signal + Noise Matrices, and Phase Transitions
pp 390-404
[https://www.cambridge.org/highereducation/books/linear-algebra-for-data-science-machine-learning-and-signal-processing/1D558680AF26ED577DBD9C4B5F1D0FED#contents]
Maximise student engagement and understanding of matrix methods in data-driven applications with this modern teaching package. Students are introduced to matrices in two preliminary chapters, before progressing to advanced topics such as the nuclear norm, proximal operators and convex optimization. Highlighted applications include low-rank approximation, matrix completion, subspace learning, logistic regression for binary classification, robust PCA, dimensionality reduction and Procrustes problems. Extensively classroom-tested, the book includes over 200 multiple-choice questions suitable for in-class interactive learning or quizzes, as well as homework exercises (with solutions available for instructors). It encourages active learning with engaging 'explore' questions, with answers at the back of each chapter, and Julia code examples to demonstrate how the mathematics is actually used in practice. A suite of computational notebooks offers a hands-on learning experience for students. This is a perfect textbook for upper-level undergraduates and first-year graduate students who have taken a prior course in linear algebra basics.
(https://www.cambridge.org/highereducation/books/linear-algebra-for-data-science-machine-learning-and-signal-processing/1D558680AF26ED577DBD9C4B5F1D0FED#contents)
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