5697 - 深度學習
Deep Learning
教育目標 Course Target
1 學習深度學習基礎原理
2 如何使用深度學習來解決應用問題
3 如何使用深度學習工具
4 常用的深度學習與AI應用
1 Learn the basic principles of in-depth learning
2 How to use deep learning to solve application problems
3 How to use the deep learning tool
4 Commonly used in-depth learning and AI applications
課程概述 Course Description
Machine learning is the science of data analysis that enables computers to learn without being explicitly programmed. From the computer science point of view, unlike computational statistics dealing with prediction-making or data mining focusing on data-exploring, machine learning uses data to iteratively detect patterns and adjust models accordingly. This introductory course provides students an overview of the field of machine learning, as well as of its fundamental concepts and algorithms from practical perspective. Usually, machine learning algorithms are categorized as being supervised or unsupervised. Some of the important topics include (1) Supervised learning (Linear and Logistic Regressions, Classification and Regression Trees, Support Vector Machines, and Neural Networks). (2) Unsupervised learning (Association Rules and Cluster Analysis). (3) Others (Boosting and Random Forests).
Machine learning is the science of data analysis that enables computers to learn without being explicitly programmed. From the computer science point of view, unlike computer statistics dealing with prediction-making or data mining focusing on data-exploring, machine learning uses data to iteratively detect patterns and adjust models accordingly. This introduction course provides students an overview of the field of machine learning, as well as of its fundamental concepts and algorithms from practical perspective. Usually, machine learning algorithms are classified as being supervised or unsupervised. Some of the important topics include (1) Supervised learning (Linear and Logistic Regressions, Classification and Regression Trees, Support Vector Machines, and Neural Networks). (2) Unsupervised learning (Association Rules and Cluster Analysis). (3) Others (Boosting and Random Forests).
參考書目 Reference Books
1 Deep Reinforcement Learning, David Silver, Google DeepMind, 2017 (http://www.iclr.cc/lib/exe/fetch.php?media=iclr2015:silver-iclr2015.pdf)
2 Reinforcement Learning: An Introduction, by Richard S. Sutton, Andrew G. Barto, A Bradford Book, 2017
3 Other Internet Resources
1 Deep Reinforcement Learning, David Silver, Google DeepMind, 2017 (http://www.iclr.cc/lib/exe/fetch.php?media=iclr2015:silver-iclr2015.pdf)
2 Reinforcement Learning: An Introduction, by Richard S. Sutton, Andrew G. Barto, A Bradford Book, 2017
3 Other Internet Resources
評分方式 Grading
評分項目 Grading Method |
配分比例 Percentage |
說明 Description |
---|---|---|
期中考 Midterm exam |
30 | 筆試 |
期末專案 Final period project |
30 | 分組專案 |
作業 Action |
30 | 回家作業 |
出席 Attend |
10 | 出席 |
授課大綱 Course Plan
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相似課程 Related Courses
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課程資訊 Course Information
基本資料 Basic Information
- 課程代碼 Course Code: 5697
- 學分 Credit: 3-0
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上課時間 Course Time:Tuesday/2,3,4[ST436]
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授課教師 Teacher:陳隆彬
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修課班級 Class:資工碩1,2
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選課備註 Memo:三大領域:人工智慧
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