
Math for Machine Learning
72 afleveringen
1. Introduction Lecture (1 of 72 Lectures)

1. Introduction Lecture (1 of 72 Lectures)
An introduction to the course is provided. Practice problems available at onlinemathtraining.
3min.
2 mei 2018
2. Section 1: Linear Regression (First Lecture: Linear Regression)

2. Section 1: Linear Regression (First Lecture: Linear Regression)
Students will learn about the notion of residual sum of squares. Practice problems available at onlinemathtraining.
8min.
2 mei 2018
3. The Least Squares Method

3. The Least Squares Method
Students will learn how to apply the least squares method to solve the least squares problem.
11min.
2 mei 2018
4. Linear Algebra Solution to Least Squares Problem

4. Linear Algebra Solution to Least Squares Problem
Students will learn about a linear algebra approach to solving the least squares problem.
13min.
2 mei 2018
5. Example: Linear Regression

5. Example: Linear Regression
An example of applying the least squares method is provided.
4min.
2 mei 2018
6. Summary: Linear Regression

6. Summary: Linear Regression
A summary of linear regression is provided.
33sec
2 mei 2018
7. Section 2: Linear Discriminant Analysis (First Lecture: Classification)

7. Section 2: Linear Discriminant Analysis (First Lecture: Classification)
Students will be introduced to classification problems. Practice problems available at onlinemathtraining.
1min.
2 mei 2018
8. Linear Discriminant Analysis

8. Linear Discriminant Analysis
The method of linear discriminant analysis is introduced.
44sec
2 mei 2018
9. The Posterior Probability Functions

9. The Posterior Probability Functions
In this lecture, we build a formula for the posterior probability.
4min.
2 mei 2018
10. Modelling the Posterior Probability Functions

10. Modelling the Posterior Probability Functions
In this lecture, we model the posterior probability functions.
7min.
2 mei 2018
11. Linear Discriminant Functions

11. Linear Discriminant Functions
Students will learn what linear discriminant functions are.
6min.
2 mei 2018
12. Estimating the Linear Discriminant Functions

12. Estimating the Linear Discriminant Functions
In this lecture, we estimate the linear discriminant functions.
6min.
2 mei 2018
13. Classifying Data Points Using Linear Discriminant Functions

13. Classifying Data Points Using Linear Discriminant Functions
Students will learn how to classify data points using linear discriminant functions.
3min.
2 mei 2018
14. LDA Example 1

14. LDA Example 1
Students will see an example of applying linear discriminant analysis.
14min.
2 mei 2018
15. LDA Example 2

15. LDA Example 2
Another example of applying linear discriminant analysis is provided.
18min.
2 mei 2018
16. Summary: Linear Discriminant Analysis

16. Summary: Linear Discriminant Analysis
A summary of linear discriminant analysis is provided.
2min.
2 mei 2018
17. Section 3: Logistic Regression (First Lecture: Logistic Regression)

17. Section 3: Logistic Regression (First Lecture: Logistic Regression)
The method of logistic regression is introduced. Practice problems available at onlinemathtraining.
1min.
2 mei 2018
18. Logistic Regression Model of the Posterior Probability Function

18. Logistic Regression Model of the Posterior Probability Function
In this lecture, we model the posterior probability function.
3min.
2 mei 2018
19. Estimating the Posterior Probability Function

19. Estimating the Posterior Probability Function
In this lecture, we introduce a strategy for estimating the posterior probability function.
9min.
2 mei 2018
20. The Multivariate Newton-Raphson Method

20. The Multivariate Newton-Raphson Method
Students will learn how the Multivariate Newton-Raphson method is used to maximize a function.
9min.
2 mei 2018
21. Maximizing the Log-Likelihood Function

21. Maximizing the Log-Likelihood Function
In this lecture, we apply the multivariate Newton-Raphson method to the log-likelihood function and learn about iterative reweighted least squares.
14min.
2 mei 2018
22. Example: Logistic Regression

22. Example: Logistic Regression
Students will learn how to apply logistic regression to solve a classification problem.
10min.
2 mei 2018
23. Summary: Logistic Regression

23. Summary: Logistic Regression
A summary of logistic regression is provided.
1min.
2 mei 2018
24. Section 4: Artificial Neural Networks (First Lecture: Artificial Neural Networks)

24. Section 4: Artificial Neural Networks (First Lecture: Artificial Neural Networks)
An introduction to artificial neural networks is provided. Practice problems available at onlinemathtraining.
35sec
2 mei 2018
Math for Machine Learning
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