of symmetric matrices\
16:23 Eigenvalues for a (real) symmetric matrix are real
47:13 Orthogonal diagonalization
53:33 If a matrix is orthogonally diagonalizable, it is symmetric
57:42 The Spectral Theorem Each symmetric matrix is orthogonally diagonalizable
1:12:52 Orthogonal diagonalization how to do it
1:18:56 Orthogonal diagonalization, Problem 2
1:28:33 Spectral decomposition for symmetric matrices, Problem 3
1:54:28 Orthogonal diagonalization, Problem 4
2:14:00 Orthogonal diagonalization, Problem 5
2:19:55 Orthogonal diagonalization, Problem 6
2:34:18 Orthogonal diagonalization, Problem 7
2:40:05 Spectral decomposition, Problem 8
2:55:04 Pos and neg definite matrices, semidefinite and indefinite matrices, Problem 9
3:29:10 The wonderful strength of an orthogonally diagonalized matrix
3:40:13 Three tests for definiteness of symmetric matrices, Problem 10
3:55:56 Symmetric square roots of symmetric positive definite matrices; singular values
forms and their classification\
4:07:05 The correspondence between quadratic forms and symmetric matrices is 1-to-1
4:30:56 Completing the square is not unique
4:37:43 What kind of questions we want to answer
4:46:28 163 Quadratic forms in two variables, Problem 1.
4:56:37 Quadratic forms in two variables, Problem 2
5:07:48 Quadratic curves, generally
5:16:14 Quadratic curves as conic sections
5:27:27 Quadratic curves by distances; shortest distance from the origin
5:47:03 Principal axes; The shortest distance from the origin, Problem 3
6:08:30 Classification of quadratic forms in two variables
6:18:49 Classification of curves, Problem 4
6:35:35 Classification of curves, Problem 5
6:47:25 Different roles of symmetric matrices (back to Videos 150 and 168), Problem
7:12:45 Classification of curves, Problem 7
7:26:38 Generally about quadratic surfaces
7:44:39 Some nice visuals on quadratic surfaces
8:02:38 Quadratic surfaces, shortest distance, Problem 8
8:31:26 Quadratic surfaces, Problem 9
8:46:37 Quadratic surfaces, Problem 10
9:03:45 Law of inertia for quadratic forms; Signature of a form, Problem 11
9:31:20 Four methods of determining definiteness; Problem 12
optimization\
9:44:14 The theory for this section
10:14:44 Constrained optimization, Problem 1
10:20:57 Constrained optimization, Problem 2
10:27:06 Constrained optimization, Problem 3
10:32:42 Constrained optimization, Problem 4
Grand Finale Singular Value Decomposition and Pseudoinverses\
10:36:10 All our roads led us to SVD
10:38:19 Why do we need SVD
10:44:43 We know really a lot about AT A for any rectangular matrix A
10:53:28 New facts about AT A eigenvalues and eigenvectors Singular values of A
11:10:19 ON-bases containing only eigenvectors of certain matrix products
11:33:27 Singular value decomposition with proof and geometric interpretation
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