Week |
Lecture |
Topic |
1 |
Lecture 1 Lecture 2 |
Introduction, Data Objects, and Types, Central Tendency, Dispersion, Correlation, Normal Distribution |
2 |
Lecture 3 Lecture 4 |
Hypothesis Testing, Visualization, Similarity Measures Part1 |
3 |
Lecture 5 Lecture 6 |
Similarity Measures Part 2, Data Quality, Cleaning, and Integration |
4 |
Lecture 7 Lecture 8 |
Data Reduction and Transformation, Dimensionality Reduction, Classification Introduction |
5 |
Lecture 9 Lecture 10 |
Decision Tree, Splitting Measures |
6 |
Lecture 11 Lecture 12 |
Naive Bayes Classifier, Linear Models |
7 |
Lecture 13 Lecture 14 |
Evaluation, Lazy Learning, Ensemble Methods |
8 |
Lecture 15 Lecture 16 |
Bayesian Belief Networks, Support Vector Machines |
9 |
- |
Spring Break |
10 |
Lecture 17 Lecture 18 |
Pattern Discovery Concepts, Pattern Discovery Methods: Apriori, FPGrowth, and ECLAT |
11 |
Lecture 19 Lecture 20 |
Sequential Pattern Mining, Evaluation |
12 |
Lecture 21 Lecture 22 |
Constraint Pattern Mining, Graph Pattern Mining |
13 |
Lecture 23 Lecture 24 |
Cluster Analysis Introduction, Partitioning-based Methods, Hierarchical Clustering Methods |
14 |
Lecture 25 Lecture 26 |
Density-based and Grid-based Clustering Methods, Probabilistic Model-based Clustering Methods, Validation |
15 |
Lecture 27 Lecture 28 |
Deep Learning |
16 |
- |
Reading Week (No Lectures) |