Linear Algebra and Optimization for Machine Learning Linear Algebra and Optimization for Machine Learning

Linear Algebra and Optimization for Machine Learning

A Textbook

    • $39.99
    • $39.99

Publisher Description

This textbook introduces linear algebra and optimization in the context of machine learning. Examples and exercises are provided throughout the book. A solution manual for the exercises at the end of each chapter is available to teaching instructors. This textbook targets graduate level students and professors in computer science, mathematics and data science. Advanced undergraduate students can also use this textbook. The chapters for this textbook are organized as follows: 

1. Linear algebra and its applications: The chapters focus on the basics of linear algebra together with their common applications to singular value decomposition, matrix factorization, similarity matrices (kernel methods), and graph analysis. Numerous machine learning applications have been used as examples, such as spectral clustering, kernel-based classification, and outlier detection. The tight integration of linear algebra methods with examples from machine learning differentiates this book fromgeneric volumes on linear algebra. The focus is clearly on the most relevant aspects of linear algebra for machine learning and to teach readers how to apply these concepts.

2. Optimization and its applications: Much of machine learning is posed as an optimization problem in which we try to maximize the accuracy of regression and classification models. The “parent problem” of optimization-centric machine learning is least-squares regression. Interestingly, this problem arises in both linear algebra and optimization, and is one of the key connecting problems of the two fields.  Least-squares regression is also the starting point for support vector machines, logistic regression, and recommender systems. Furthermore, the methods for dimensionality reduction and matrix factorization also require the development of optimization methods. A general view of optimization in computational graphs is discussed together with its applications to back propagation in neural networks. 

A frequent challenge faced by beginners in machine learning is the extensive background required in linear algebra and optimization. One problem is that the existing linear algebra and optimization courses are not specific to machine learning; therefore, one would typically have to complete more course material than is necessary to pick up machine learning. Furthermore, certain types of ideas and tricks from optimization and linear algebra recur more frequently in machine learning than other application-centric settings. Therefore, there is significant value in developing a view of linear algebra and optimization that is better suited to the specific perspective of machine learning.

GENRE
Science & Nature
RELEASED
2020
May 13
LANGUAGE
EN
English
LENGTH
516
Pages
PUBLISHER
Springer International Publishing
SELLER
Springer Nature B.V.
SIZE
28.3
MB

More Books Like This

Matrix Analysis and Applications Matrix Analysis and Applications
2017
Matrix Algebra Matrix Algebra
2017
Matrix-Based Multigrid Matrix-Based Multigrid
2008
G.W. Stewart G.W. Stewart
2010
A Matrix Algebra Approach to Artificial Intelligence A Matrix Algebra Approach to Artificial Intelligence
2020
Explorations in Numerical Analysis Explorations in Numerical Analysis
2018

More Books by Charu C. Aggarwal

Neural Networks and Deep Learning Neural Networks and Deep Learning
2018
Data Mining Data Mining
2015
Recommender Systems Recommender Systems
2016
Social Network Data Analytics Social Network Data Analytics
2011
Artificial Intelligence Artificial Intelligence
2021
Machine Learning for Text Machine Learning for Text
2018