Week | Date | Content | Exercise |
---|---|---|---|
1 | 9/12 | 1. Overview of the course | |
2 | 9/19 | 1. Introduction to ML 2. KNN 3. k-means | Exercise 1 (due: 10/2 23:59:59) |
3 | 9/26 | 1. Distance measures 2. Entropy 3. Decision tree | |
4 | 10/3 | 1. Decision tree 2. Matrix derivatives | |
5 | 10/10 | Holiday | |
6 | 10/17 | Linear regression and regularization (Lasso, Ridge, Elastic-net) | Exercise 2 (due: |
7 | 10/24 | 1. Logistic regression and gradient ascent 2. Evaluation metrics for binary classification | |
8 | 10/31 | 1. Invited talk by Dr. Shuen-Huei Guan and Dr. Jing-Kai Lou from KKCompany 2. Evaluation metrics for multi-class and multi-label classification3. ROC curve vs PR curve | |
9 | 11/7 | 1. Recommender systems 2. Differentiating regularization weight 3. Factorization Machine and Field-aware Factorization Machine | One page proposal for final project (due: 11/13 23:59:59) Exercise 3 (due: 11/20 23:59:59) |
10 | 11/14 | 1. Learning to rank 2. Linear SVM | Kaggle competition (begins on 11/13 and ends on 12/25) An one-page report to describe your method (due: 12/27 23:59:59) |
11 | 11/21 | 1. Kernel SVM 2. Regularized linear regression and classification | |
12 | 11/28 | 1. Linear SVM with poly-2 terms vs. polynomial kernel SVM 2. Practical concerns 3. Invited talk: Explanable AI by Prof. Hao-Tsung Yang | |
13 | 12/5 | 1. Multi-layer perceptron 2. Convolutional neural network | |
14 | 12/12 | 1. Convolutional neural network 2. Recurrent neural network | |
15 | 12/19 | Associated Learning | |
16 | 12/26 | Transformer and Large Language Model | |
17 | 1/2 | Flexible learning week: (1) Recorded invited talk by Prof. Chin-Te Lin (2) Field trip to the FESTO lab | Final project due: 1/2 23:59:59 |
18 | 1/9 | Flexible learning week: Explainable AI and ethics |