网易首页
19. Singular Value Decomposition (SVD) - 3
2023年9月23日 572观看
艾伦·爱德曼和茱莉亚
大学课程 / 外语
https://ocw.mit.edu/18-065S18 MIT 18.065 Matrix Methods in Data Analysis, Signal Processing, and Machine Learning, Spring 2018 Professor Strang describes the four topics of the course: Linear Algebra, Deep Learning, Optimization, and Statistics.
共102集
11.5万人观看
1
Course Introduction of 18.065 by Professor Strang
07:03
2
The Column Space of A Contains All Vectors Ax - 1
17:27
3
The Column Space of A Contains All Vectors Ax - 2
17:28
4
The Column Space of A Contains All Vectors Ax - 3
17:23
5
Multiplying and Factoring Matrices - 1
16:11
6
Multiplying and Factoring Matrices - 2
16:14
7
Multiplying and Factoring Matrices - 3
16:03
8
Orthonormal Columns in Q Give Q'Q = I - 1
16:31
9
Orthonormal Columns in Q Give Q'Q = I - 2
16:38
10
Orthonormal Columns in Q Give Q'Q = I - 3
16:28
11
Eigenvalues and Eigenvectors - 1
16:21
12
Eigenvalues and Eigenvectors - 2
16:22
13
Eigenvalues and Eigenvectors - 3
16:21
14
Positive Definite and Semidefinite Matrices - 1
15:12
15
Positive Definite and Semidefinite Matrices - 2
15:19
16
Positive Definite and Semidefinite Matrices - 3
15:03
17
Singular Value Decomposition (SVD) - 1
17:54
18
Singular Value Decomposition (SVD) - 2
17:59
19
Singular Value Decomposition (SVD) - 3
17:51
20
Eckart-Young - The Closest Rank k Matrix to A - 1
15:48
21
Eckart-Young - The Closest Rank k Matrix to A - 2
15:49
22
Eckart-Young - The Closest Rank k Matrix to A - 3
15:46
23
Norms of Vectors and Matrices - 1
16:30
24
Norms of Vectors and Matrices - 2
16:30
25
Norms of Vectors and Matrices - 3
16:26
26
Four Ways to Solve Least Squares Problems - 1
16:40
27
Four Ways to Solve Least Squares Problems - 2
16:41
28
Four Ways to Solve Least Squares Problems - 3
16:32
29
Survey of Difficulties with Ax = b - 1
16:35
30
Survey of Difficulties with Ax = b - 2
16:39
31
Survey of Difficulties with Ax = b - 3
16:27
32
Minimizing _x_ Subject to Ax = b - 1
16:50
33
Minimizing _x_ Subject to Ax = b - 2
16:52
34
Minimizing _x_ Subject to Ax = b - 3
16:46
35
Computing Eigenvalues and Singular Values - 1
16:32
36
Computing Eigenvalues and Singular Values - 2
16:38
37
Computing Eigenvalues and Singular Values - 3
16:29
38
Randomized Matrix Multiplication - 1
17:31
39
Randomized Matrix Multiplication - 2
17:36
40
Randomized Matrix Multiplication - 3
17:29
41
Low Rank Changes in A and Its Inverse - 1
16:54
42
Low Rank Changes in A and Its Inverse - 2
16:55
43
Low Rank Changes in A and Its Inverse - 3
16:49
44
Matrices A(t) Depending on t, Derivative = dA_dt - 1
17:00
45
Matrices A(t) Depending on t, Derivative = dA_dt - 2
17:01
46
Matrices A(t) Depending on t, Derivative = dA_dt - 3
16:54
47
Derivatives of Inverse and Singular Values - 1
14:25
48
Derivatives of Inverse and Singular Values - 2
14:32
49
Derivatives of Inverse and Singular Values - 3
14:25
50
Rapidly Decreasing Singular Values - 1
16:54
51
Rapidly Decreasing Singular Values - 2
16:56
52
Rapidly Decreasing Singular Values - 3
16:52
53
Counting Parameters in SVD, LU, QR, Saddle Points - 1
16:23
54
Counting Parameters in SVD, LU, QR, Saddle Points - 2
16:24
55
Counting Parameters in SVD, LU, QR, Saddle Points - 3
16:16
56
Saddle Points Continued, Maxmin Principle - 1
17:27
57
Saddle Points Continued, Maxmin Principle - 2
17:32
58
Saddle Points Continued, Maxmin Principle - 3
17:27
59
Definitions and Inequalities - 1
18:23
60
Definitions and Inequalities - 2
18:30
61
Definitions and Inequalities - 3
18:19
62
Minimizing a Function Step by Step - 1
17:57
63
Minimizing a Function Step by Step - 2
18:02
64
Minimizing a Function Step by Step - 3
17:50
65
Gradient Descent - Downhill to a Minimum - 1
17:37
66
Gradient Descent - Downhill to a Minimum - 2
17:39
67
Gradient Descent - Downhill to a Minimum - 3
17:36
68
Accelerating Gradient Descent (Use Momentum) - 1
16:23
69
Accelerating Gradient Descent (Use Momentum) - 2
16:23
70
Accelerating Gradient Descent (Use Momentum) - 3
16:23
71
Linear Programming and Two-Person Games - 1
17:54
72
Linear Programming and Two-Person Games - 2
18:00
73
Linear Programming and Two-Person Games - 3
17:52
74
Stochastic Gradient Descent - 1
17:43
75
Stochastic Gradient Descent - 2
17:49
76
Stochastic Gradient Descent - 3
17:37
77
Structure of Neural Nets for Deep Learning - 1
17:48
78
Structure of Neural Nets for Deep Learning - 2
17:54
79
Structure of Neural Nets for Deep Learning - 3
17:47
80
Backpropagation - Find Partial Derivatives - 1
17:35
81
Backpropagation - Find Partial Derivatives - 2
17:35
82
Backpropagation - Find Partial Derivatives - 3
17:36
83
Completing a Rank-One Matrix, Circulants! - 1
16:40
84
Completing a Rank-One Matrix, Circulants! - 2
16:44
85
Completing a Rank-One Matrix, Circulants! - 3
16:34
86
Eigenvectors of Circulant Matrices - Fourier Matrix - 1
17:35
87
Eigenvectors of Circulant Matrices - Fourier Matrix - 2
17:36
88
Eigenvectors of Circulant Matrices - Fourier Matrix - 3
17:28
89
ImageNet is a Convolutional Neural Network (CNN), The Convolution Rule - 1
15:49
90
ImageNet is a Convolutional Neural Network (CNN), The Convolution Rule - 2
15:50
91
ImageNet is a Convolutional Neural Network (CNN), The Convolution Rule - 3
15:43
92
Neural Nets and the Learning Function - 1
18:45
93
Neural Nets and the Learning Function - 2
18:48
94
Neural Nets and the Learning Function - 3
18:44
95
Distance Matrices, Procrustes Problem - 1
14:40
96
Distance Matrices, Procrustes Problem - 3
14:37
97
Finding Clusters in Graphs - 1
11:39
98
Finding Clusters in Graphs - 2
11:40
99
Finding Clusters in Graphs - 3
11:35
100
Alan Edelman and Julia Language - 1
12:46
101
Alan Edelman and Julia Language - 2
12:50
102
Alan Edelman and Julia Language - 3
12:45
相关视频
第3/41集 · 08:22
高中语文《最美的风景》
大学课程
2022年9月22日
1928观看
15:02
语文27 咚咚咚 - 1
2022年10月7日
1303观看
第15/18集 · 39:29
【专升本语文免费课】语文第15课
大学课程
2022年6月19日
1258观看
第11/133集 · 08:38
小学语文第四章 试讲分类解析 第一节 阅读类 - 3
大学课程
2022年11月18日
2022观看
01:53
王字加一笔共8个字,退休语文老师勉强也只能写出7个,你呢
轻知识
11月前
595观看
02:21
高一语文第一课,改变学生对语文的认知,你同意这位老师的观点
轻知识
1月前
1466观看
第82/98集 · 12:50
【人教版】小学语文一年级上册(50.影子) - 3
大学课程
2022年11月25日
2345观看
07:54
高中语文必修三语文 人教版 部编版 统编版 高一语文高二语文必修3语文必修三语文高一必修三语文(9 劝学4)
2022年9月9日
8409观看
01:09
阅读很重要,小学高年级孩子还在看漫画的,语文不会好到哪儿去?
轻知识
3月前
602观看
第2/28集 · 08:59
初中语文《大自然语言》
大学课程
2022年9月29日
3709观看
00:25
学好语文的几件事
轻知识
2023年2月24日
3209观看
10:57
[下册]56 语文园地(七) - 3
2022年10月8日
1742观看
01:07
语文成绩一般的孩子,你就让他这样做
轻知识
1月前
773观看
00:32
如果是下面4种情况难怪语文成绩不好
轻知识
1年前
642观看
04:24
按这四个词练语文能力轻松提
轻知识
10月前
1448观看
08:15
【语文】6 写作(22题) - 1
2022年9月22日
1248观看