LEC # | Topics | Data Sources |
---|---|---|
1 |
Data Mining Overview (PDF) Prediction and Classification with k-Nearest Neighbors Example 1: Riding Mowers (PDF) |
Table 11.1 from page 584 of: Johnson, Richard, and Dean Wichern. Applied Multivariate Statistical Analysis. 5th ed. Prentice-Hall, 2002. ISBN: 0-13-092553-5. |
2 |
Classification and Bayes Rule, Naïve Bayes (PDF) |
|
3 |
Classification Trees (PDF) |
“Housing Database (Boston).” Publicly available data at University of California, Irvine School of Information and Computer Science, Machine Learning Repository of Databases. |
4 |
Discriminant Analysis Example 2: Fisher’s Iris data (PDF) |
“Iris Plant Database.” Publicly available data at University of California, Irvine School of Information and Computer Science, Machine Learning Repository of Databases. |
5 |
Logistic Regression Case (PDF) Handlooms (PDF) |
|
6 | Neural Nets (PDF) | |
7 |
Discussion of homework - see Problem 1 in assignments section |
|
8 |
Multiple Regression Review (PDF) |
|
9 |
Multiple Linear Regression in Data Mining (PDF) |
|
10 |
Regression Trees, Case: IBM/GM weekly returns Comparison of Data Mining Techniques (PDF) Discussion of homework - see Problem 2 in assignments section |
|
11 |
k-Means Clustering, Hierarchical Clustering (PDF) |
|
12 |
Case: Retail Merchandising |
|
13 |
Midterm Exam |
|
14 |
Principal Components (PDF) |
Example 1, Head Measurements of Adult Sons: Rencher, Alvin. Methods of Multivariate Analysis. 2nd ed. Wiley-Interscience, 2002. Table 3.7, p. 79. ISBN: 0-471-46172-5. Example 2, Charactersitics of Wine: “Wine Recognition Database.” Publicly available data at University of California, Irvine School of Information and Computer Science, Machine Learning Repository of Databases. |
15 |
Guest Lecture by Dr. Ira Haimowitz: Data Mining and CRM at Pfizer |
|
16 |
Association Rules (Market Basket Analysis) (PDF) |
Han, Jiawei, and Micheline Kamber. Data Mining: Concepts and Techniques. Morgan Kauffman Publishers, 2001. Example 6.1 (Figure 6.2). ISBN: 1-55860-489-8. |
17 |
Recommendation Systems: Collaborative Filtering |
|
18 |
Guest Lecture by Dr. John Elder IV, Elder Research: The Practice of Data Mining |
Lecture Notes
Course Info
Instructor
Departments
As Taught In
Spring
2003
Level
Learning Resource Types
assignment
Problem Sets
grading
Exams
notes
Lecture Notes