跳到主要內容區

 工程技術導論與專題實務創新課程模組工程技術導論與專題實務創新課程模組

Top

105年度下學期-機器學習

機器學習

MACHINE LEARNING

ICE535

課程類別:講授類

必選修:選修

系所:通訊工程研究所碩士班

授課教師:溫朝凱

學分:3

課程大鋼:

Data analysis methods in machine learning are widely considered as a useful tool in recent industry and science. With the growth of the Web and improvements in data collection technology in science, the magnitude and complexity of these analysis tasks also rapid increase. This trend is driving the need for scalable, parallel and online algorithms and models which can handle such “Big Data”. This course will provide a broad foundation for this timely challenge.

課程目標:

1. Modeling Techniques: linear models, graphical models, matrix and tensor factorizations, clustering, and latent factor models.

2. Algorithmic Topics: sketching, fast n-body problems, random projections and hashing, large-scale online learning, and parallel learning.

3. Computational Techniques: a basic foundation in large-scale programming, ranging from the basic "parfor" to parallel abstractions.

授課方式:

Lecture

評分方式:

1.Quizzes:30%

2.Midterm Presentation :30%

3.Final Project :40%

每週課程期預定進度:

週次

日期

授課內容及主題

1

2017/02/20~2017/02/26

Introduction

2

2017/02/27~2017/03/05

Overview of Supervised Learning

3

2017/03/06~2017/03/12

Linear Methods for Regression

4

2017/03/13~2017/03/19

Linear Methods for Classification

5

2017/03/20~2017/03/26

Basis Expansions and Regularization

6

2017/03/27~2017/04/02

Kernel Smoothing Methods

7

2017/04/03~2017/04/09

Model Assessment and Selection

8

2017/04/10~2017/04/16

Model Inference and Averaging

9

2017/04/17~2017/04/23

Midle Exam

10

2017/04/24~2017/04/30

Additive Models, Trees, and Related Methods

11

2017/05/01~2017/05/07

Additive Models, Trees, and Related Methods

12

2017/05/08~2017/05/14

Boosting and Additive Trees

13

2017/05/15~2017/05/21

Neural Networks

14

2017/05/22~2017/05/28

Support Vector Machines and Flexible Discriminants

15

2017/05/29~2017/06/04

Prototype Methods and Nearest-Neighbors

16

2017/06/05~2017/06/11

Unsupervised Learning

17

2017/06/12~2017/06/18

Random Forests

18

2017/06/19~2017/06/25

Final Exam

課程討論時間:

時段1:

時間:星期四12:00~14:00

地點:EC9009

時段2:

時間:星期五12:00~14:00

地點:EC9009

瀏覽數: