Course Outline: (Click Icon to download !!) (Last update on: 4 March 2021) |
Key facts for Summer 2021:
Date: | 13, 17, 20* August 2021 (14 hours) | |
Time: | 09:30am – 1:00pm; 2:00pm –5:30pm | |
Teaching Platform: | Face to Face (The Chinese University of Hong Kong) # | |
Enrollment: | 30 | |
Expected applicants: | Students who are studying S4-S5with good knowledge in mathematics | |
Tuition Fee: | HKD 2,940.00 | |
Lecturer: | Dr. LEE Pak Kuen Philip | |
* This date is reserved for make-up classes in case there is any cancellation of classes due to unexpected circumstances. # This course is offered face-to-face lessons at CUHK campus. It may switch to online teaching in accordance with the pandemic development and the policy of the university. |
Introduction:
Data from various fields, such as climatology, finance and sports, exhibit different properties. This course aims to use the R-package (a statistical software) to visualize the properties of the data, fit the data into various statistical models, assess model performance and predict the data. Topics include exploratory data analysis, time series models, hidden Markov models, classification trees, Poisson process and analysis of big data problems. Students will gain hands-on experience in statistical programming at the computer lab.
各種領域的數據(如氣候學,金融及運動)會展示不同的特質。本課程目標是透過統計軟件R去透視數據多方面的特性,從而用適當的統計模型去解釋,評估模型的表現及作出數據預測。本課程涵蓋範圍包括:探索性數據分析,時間序列模型,隱馬爾可夫模型,分類樹,泊松過程和大數據問題的分析。學生將親身體驗統計程式的編寫。
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Category: | Category II – Academy Credit-Bearing | |
Learning outcomes: | Upon completion of this course, students should be able to: | |
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Medium of Instruction: | Cantonese supplemented with English | |
Assessment: |
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Recognition: | No. of Academy unit(s) awarded: 1 * Certificate or letter of completion will be awarded to students who attain at least 75% attendance and pass the assessment (if applicable) |
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Expected applicants: | Students who are studying S4-S5with good knowledge in mathematics | |
Organising period: | Summer 2019; Summer 2020; Summer 2021 | |
Application method: | SAYT Online application |