Singular value decomposition | Operator theory

Singular value

In mathematics, in particular functional analysis, the singular values, or s-numbers of a compact operator acting between Hilbert spaces and , are the square roots of the (necessarily non-negative) eigenvalues of the self-adjoint operator (where denotes the adjoint of ). The singular values are non-negative real numbers, usually listed in decreasing order (σ1(T), σ2(T), …). The largest singular value σ1(T) is equal to the operator norm of T (see Min-max theorem). If T acts on Euclidean space , there is a simple geometric interpretation for the singular values: Consider the image by of the unit sphere; this is an ellipsoid, and the lengths of its semi-axes are the singular values of (the figure provides an example in ). The singular values are the absolute values of the eigenvalues of a normal matrix A, because the spectral theorem can be applied to obtain unitary diagonalization of as . Therefore, . Most norms on Hilbert space operators studied are defined using s-numbers. For example, the Ky Fan-k-norm is the sum of first k singular values, the trace norm is the sum of all singular values, and the Schatten norm is the pth root of the sum of the pth powers of the singular values. Note that each norm is defined only on a special class of operators, hence s-numbers are useful in classifying different operators. In the finite-dimensional case, a matrix can always be decomposed in the form , where and are unitary matrices and is a rectangular diagonal matrix with the singular values lying on the diagonal. This is the singular value decomposition. (Wikipedia).

Singular value
Video thumbnail

Determine the Singular Value Decomposition of a Matrix

This video explains how to determine the singular value decomposition of a matrix. https://mathispower4u.com

From playlist Singular Values / Singular Value Decomposition of a Matrix

Video thumbnail

Determine the Singular Value Decomposition of a Matrix

This video explains how to determine the singular value decomposition of a matrix.

From playlist Singular Values / Singular Value Decomposition of a Matrix

Video thumbnail

Determine the Singular Values of a Matrix

This video explains how to determine the singular values of a matrix.

From playlist Singular Values / Singular Value Decomposition of a Matrix

Video thumbnail

Absolute Value Equations

http://mathispower4u.wordpress.com/

From playlist Solving Absolute Value Equations

Video thumbnail

Solving a multi step absolute value equation

Learn how to solve absolute value equations with extraneous solutions. Absolute value of a number is the positive value of the number. For instance, the absolute value of 2 is 2 and the absolute value of -2 is also 2. To solve an absolute value problem, we first isolate the absolute value

From playlist Solve Absolute Value Equations

Video thumbnail

Solving an Absolute Value Equation and Checking for Extraneous Solutions

Learn how to solve absolute value equations with extraneous solutions. Absolute value of a number is the positive value of the number. For instance, the absolute value of 2 is 2 and the absolute value of -2 is also 2. To solve an absolute value problem, we first isolate the absolute value

From playlist Solve Absolute Value Equations

Video thumbnail

Learn How to Solve a Multi Step Absolute Value Equation

Learn how to solve absolute value equations with extraneous solutions. Absolute value of a number is the positive value of the number. For instance, the absolute value of 2 is 2 and the absolute value of -2 is also 2. To solve an absolute value problem, we first isolate the absolute value

From playlist Solve Absolute Value Equations

Video thumbnail

How To Solve an Absolute Value Equation and Test Our Solutions when They Do Not Work

Learn how to solve absolute value equations with extraneous solutions. Absolute value of a number is the positive value of the number. For instance, the absolute value of 2 is 2 and the absolute value of -2 is also 2. To solve an absolute value problem, we first isolate the absolute value

From playlist Solve Absolute Value Equations

Video thumbnail

Singular Value Decomposition

Singular values. The Singular Value Decomposition.

From playlist Linear Algebra Done Right

Video thumbnail

Ralph Willox: The singularity structure of integrable lattice equations

Abstract: Although the notion of singularity confinement was first introduced as a crucial attribute of the singularities of the discrete KdV (dKdV) equation, as of yet there is still no rigorous definition of the notion of `confinement' in the context of lattice equations. In fact, somewh

From playlist Integrable Systems 9th Workshop

Video thumbnail

Statistical mechanics of deep learning - Surya Ganguli

Workshop on Theory of Deep Learning: Where next? Topic: Statistical mechanics of deep learning Speaker: Surya Ganguli Affiliation: Stanford University Date: October 18, 2019 For more video please visit http://video.ias.edu

From playlist Mathematics

Video thumbnail

Singular Value Decomposition — Topic 35 of Machine Learning Foundations

With a focus on hands-on code demos in Python, in this video I introduce the theory and practice of singular value decomposition, a common linear algebra operation in the field of machine learning. There are eight subjects covered comprehensively in the ML Foundations series and this vid

From playlist Linear Algebra for Machine Learning

Video thumbnail

Complex analysis: Singularities

This lecture is part of an online undergraduate course on complex analysis. We discuss the different sorts of singularities of a holomorphic function (removable singularities, poles, essential singularities, branch-points, limits of singularities, natural boundaries) and give examples of

From playlist Complex analysis

Video thumbnail

Math 060 Linear Algebra 35 121014: Singular Value Decomposition and Low-Rank Approximation (1/2)

Singular Value Decomposition: finishing the proof that the closest (in Frobenius norm) matrix of rank k (or less) to a given matrix A can be constructed using an SVD of A.

From playlist Course 4: Linear Algebra

Video thumbnail

Easiest Way to Understanding Singular Value Decomposition (SVD) with Python: numpy.linalg.svd

In this video, we explain an important matrix factorization technique, which is called Singular Value Decomposition or SVD for short. The idea is that we decompose a given matrix as a product of three matrices: left singular vectors, singular values, and right singular vectors. We explain

From playlist Mathematics for Machine Learning - Dr. Data Science Series

Video thumbnail

Learn How To Solve an Absolute Value Equation and Check Your Answers

Learn how to solve absolute value equations with extraneous solutions. Absolute value of a number is the positive value of the number. For instance, the absolute value of 2 is 2 and the absolute value of -2 is also 2. To solve an absolute value problem, we first isolate the absolute value

From playlist Solve Absolute Value Equations

Related pages

Functional analysis | Operator norm | Trace (linear algebra) | Spectral theorem | Ellipsoid | Banach space | Singular value decomposition | Condition number | Poincaré separation theorem | Erhard Schmidt | Mathematics | Schatten norm | Schur–Horn theorem | Real number | N-sphere | Weyl's inequality | Unitary matrix | Compact operator | Hilbert space | Min-max theorem | Matrix (mathematics)