–Schmidt process\
1:59 Calculating projections, Problem 4
16:25 Calculating projections, Problem 5
25:20 Gram–Schmidt Process
36:06 Gram–Schmidt Process, Our unifying example
43:51 Gram–Schmidt Process, Problem 6
56:17 Gram–Schmidt Process, Problem 7
matrices\
1:17:10 Product of a matrix and its transposed is symmetric
1:22:57 Definition and examples of orthogonal matrices
1:30:39 Geometry of 2-by-2 orthogonal matrices
1:37:57 A 3-by-3 example
1:44:51 Useful formulas for the coming proofs
1:52:34 Property 1_ Determinant of each orthogonal matrix is 1 or −1
2:00:04 Property 2_ Each orthogonal matrix A is invertible and A−1 is also orthogona
2:05:31 Property 3_ Orthonormal columns and rows
2:11:02 Property 4_ Orthogonal matrices are transition matrices between ON-bases
2:19:27 Property 5_ Preserving distances and angles
2:48:31 Property 6_ Product of orthogonal matrices is orthogonal
2:55:05 Orthogonal matrices, Problem 1
3:07:47 Orthogonal matrices, Problem 2
and eigenvectors\
3:16:12 Crash course in factoring polynomials
3:35:41 Eigenvalues and eigenvectors, the terms
3:38:16 Order of defining, order of computing
3:40:14 Eigenvalues and eigenvectors geometrically
3:56:17 Eigenvalues and eigenvectors, Problem 1
4:01:31 How to compute eigenvalues Characteristic polynomial
4:18:40 How to compute eigenvectors
4:38:18 Finding eigenvalues and eigenvectors_ short and sweet
4:43:44 Eigenvalues and eigenvectors for examples from Video 180
5:17:42 Eigenvalues and eigenvectors, Problem 3
5:46:11 Eigenvalues and eigenvectors, Problem 4
5:59:14 Eigenvalues and eigenvectors, Problem 5
6:19:16 Eigenvalues and eigenvectors, Problem 6
6:49:19 Eigenvalues and eigenvectors, Problem 7
\
6:57:40 Why you should love diagonal matrices
7:06:09 Similar matrices
7:09:19 Similarity of matrices is an equivalence relation (RST)
7:23:22 Shared properties of similar matrices
7:31:20 Diagonalizable matrices
7:35:59 How to diagonalize a matrix, a recipe
7:49:01 Diagonalize our favourite matrix
7:55:32 Eigenspaces; geometric and algebraic multiplicity of eigenvalues
8:10:02 Eigenspaces, Problem 2
8:40:21 Eigenvectors corresponding to different eigenvalues are linearly independent
9:05:59 A sufficient, but not necessary, condition for diagonalizability
9:08:53 Necessary and sufficient condition for diagonalizability
9:19:22 Diagonalizability, Problem 3
9:35:39 Diagonalizability, Problem 4
9:40:51 Diagonalizability, Problem 5
9:48:40 Diagonalizability, Problem 6
9:53:48 Diagonalizability, Problem 7
10:06:19 Powers of matrices
10:11:32 Powers of matrices, Problem 8
10:20:13 Diagonalization, Problem 9
10:30:18 Sneak peek into the next course; orthogonal diagonalization
Linear Algebra and Geometry 2\
10:36:10 Linear Algebra and Geometry 2, Wrap-up
10:43:47 Yes, there will be Part 3!
10:47:30 Final words
1 view
80
21
3 months ago 01:37:26 1
Algebra Lineare (Geometria) 2 - La struttura lineare dello spazio (R^3)