1 |
Introduction to Data Mining |
|
2 |
Introduction to Data Mining |
|
3 |
Data, pre-processing and post-processing |
|
4 |
Similarity and Distance. Metrics |
|
5 |
Similarity and Distance. Metrics |
|
6 |
Clustering, K-means algorithm |
|
7 |
Implementation of K-means algorithm |
|
8 |
Singular Value Decomposition (SVD) |
|
9 |
Implementation and application of SVD in image processing |
|
10 |
Classification. Decision Tree Algorithm |
|
11 |
Implementation of decision tree algorithm |
|
12 |
Classification. k-Nearest Neighbor, Logistic Regression |
|
13 |
Implementation of Logistic Regression |
|
14 |
Implementation of k-Nearest Neighbor |
|
15 |
Classification, SVM algorithm |
|
16 |
Implementation of SVM algorithm |
|
17 |
Classification. Naive Bayes Algorithm |
|
18 |
Implementation of Naive Bayes algorithm |
|
19 |
Neural Networks |
|
20 |
Data mining in medicine |
|
21 |
Data mining in medicine |
|
22 |
Implementation with a real world medicine data |
|
23 |
Implementation with a real world medicine data |
|
24 |
Implementation with a real world medicine data |
|