CE6143 - Introduction to Data Science (Fall 2017)

Lecture language: English

Final project presentation slides

Group Title Slides
1 Music Genre Classification PDF
2 Quora Question-pair classification PPTX
3 Text sentiment analysis PPTX
4 KKBox's churn prediction PPTX
5 Guitar playing techniques recognition PPTX
6 Facial expression recognition PPTX
7 Movie box prediction from forum reviews PPTX
8 Mercari price suggestion PPTX
9 Problem Classification in K-12 Question-Driven Learning PPTX
10 Green bike demand analysis PPTX
11 Taiwan stock market trend prediction
12 Stock prediction PPTX
13 Early Prediction to Students' Academic Performance PPTX
14 Predicting traffic jam on the highway PPTX
15 Traffic sign classification PPTX
16 Predicting the first salary for fresh graduates PPTX
17 Weather prediction PPTX
18 Credit card fraud detection PPTX

Meeting time and place

Recommended textbooks

Staff

Grading

Slides

Progress (subject to change)

WeekDateContentExercise
19/121. Overview of the course
2. Introduction to ML
3. KNN
4. k-means
Exercise 1 (due: 9/25 23:59:59)
29/19TA session: Introduction to Python and popular scientific libraries in Python
39/261. Distance measures
2. Decision tree
Exercise 2 (due: 10/9 23:59:59)
410/31. Entropy
2. Decision tree
3. Linear regression
510/10Holiday
610/171. Linear regression and gradient descent
2. Linear regression and regularization (Lasso, Ridge, Elastic-net)
710/241. Matrix derivatives
2. Evaluation metrics for regression problem
3. Logistic regression
Exercise 3 (due: 11/6 23:59:59)
810/31Invited talk (speaker: Johnson Hsieh, DSP cofounder and chief knowledge officer)
911/71. Logistic regression and gradient ascent
2. Precision, recall, ROC curve, and other measures
3. Poisson regression
1011/14Midterm project proposal presentation
1111/211. SVM
2. Lagrange multiplier
3. Regularized linear regression and classification
Exercise 4 (due:12/11 23:59:59)
1211/28Invited talks (speakers: (1) Kae Lou, data scientist at KKV; (2) Hwai-Jung Hsu, Assistant Professor at FCU)
1312/51. Linear vs Kernel
2. Practical considerations
3. Ensemble methods
1412/12Recommender systems
1512/19Deep neural network
1612/26Convolutional neural network
171/2Final project presentation
181/91. Recurrent neural network
2. final wrap-up
Final project report due