2026 Hong Kong-Shanghai Mathematical Modelling Competition for Secondary Students (HSMMC) - Training Workshops for Hong Kong Representatives
「2026年香港-上海中學生數學建模比賽」- 香港代表隊訓練工作坊
Workshop schedule 工作坊時間表
| Workshop 工作坊 |
Date 日期 |
Time 時間 |
Venue 地點 |
Workshop 1 Advanced Linear Algebra and Linear Programming 進階線性代數及線性規劃 |
2 May 2026 (Saturday) 2026 年 5 月 2 日 (星期六) |
09:30 - 12:30 and 及 14:00 - 17:00 |
Wu Ho Man Yuen Building (WMY) 508, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong 香港中文大學伍何曼原樓 508 室 [Directions 如何前往] |
Workshop 2 Advanced Calculus, Optimization, and Differential Equations 進階微積分、最優化及微分方程 |
16 May 2026 (Saturday) 2026 年 5 月 16 日 (星期六) |
09:30 - 12:30 and 及 14:00 - 17:00 |
Hui Yeung Shing Building (HYS) G04, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong 香港中文大學許讓成樓 G04 室 [Directions 如何前往] |
Workshop 3 Advanced Probability, Statistics, and Data Analysis 進階概率、統計及數據分析 |
27 June 2026 (Saturday) 2026 年 6 月 27 日 (星期六) |
09:30 - 12:30 and 及 14:00 - 17:00 |
Hui Yeung Shing Building (HYS) G04, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong 香港中文大學許讓成樓 G04 室 [Directions 如何前往] |
Workshop 4 Integrated Mathematical Modelling 綜合數學建模 |
4 July 2026 (Saturday) 2026 年 7 月 4 日 (星期六) |
09:30 - 12:30 |
Hui Yeung Shing Building (HYS) G04, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong 香港中文大學許讓成樓 G04 室 [Directions 如何前往] |
Workshop 5 Integrated Mathematical Modelling 綜合數學建模 |
11 July 2026 (Saturday) 2026 年 7 月 11 日 (星期六) |
09:30 - 12:30 |
Hui Yeung Shing Building (HYS) G04, The Chinese University of Hong Kong, Shatin, N.T., Hong Kong 香港中文大學許讓成樓 G04 室 [Directions 如何前往] |
Useful Information 有用資訊:
-
HSMMC Training Workshop and Competition Arrangement 訓練工作坊及比賽安排
-
CUHK Campus Map 中大地圖
-
Remark: Following the university regulations, visitors entering the campus need to register at the security counter at the entrance. Please show your identity documents (i.e., HKID Card/ Passport) for registration. 備註:按照大學規定,進入校園的訪客需要在入口處的保安櫃檯登記。請參加者出示身份證明文件(即香港身份證/護照)以進行登記。
-
Participants are encouraged to bring their own laptops (preferred) / tablets for the IT tool learning activities during the workshops. 我們建議參加者帶備手提電腦(較佳) 或平板電腦,以便進行 IT 工具學習活動。
-
The required password is provided during the workshops 密碼於在工作坊提供。
Workshop 1 (Advanced Linear Algebra and Linear Programming) 工作坊 1 (進階線性代數及線性規劃):
Topics: Review on linear algebra (vectors, matrices, norm etc.), least-squares problems, regularized regression, eigenvalues and eigenvectors, graphs, graph algorithms, linear programming, integer programming, network flow problem, ...
主題:線性代數複習(向量、矩陣、範數等)、最小平方法問題、正則化迴歸、特徵值與特徵向量、圖論、圖算法、線性規劃、整數規劃、網路流問題...
(i) Pre-workshop Learning Tasks 工作坊前學習任務:
(ii) Workshop Materials 工作坊資源:
Workshop 2 (Advanced Calculus, Optimization, and Differential Equations) 工作坊 2 (進階微積分、最優化及微分方程):
Topics: Review on calculus, multivariable calculus, unconstrained optimization, constrained optimization, differential equations, systems of differential equations...
主題: 微積分複習、多元微積分、無約束優化、約束優化、微分方程、微分方程組...
(i) Pre-workshop Learning Tasks 工作坊前學習任務:
(ii) Workshop Materials 工作坊資源:
-
Differential Equations e-Book 微分方程電子書
-
Workshop slides 1 工作坊簡報 1 (Last updated: 17/05/2026, with a remark on optimization added)
-
Workshop slides 2 工作坊簡報 2 [Solution 答案]
-
Orthogonal Projection and Least Squares Problem 正交投影與最小二乘法問題 [English, 中文]
-
Gradient Descent Method 梯度下降法 [English, 中文]
-
First-order ODEs 一階常微分方程 [English, 中文]
-
Numerical Differential Equations 數值微分方程 [English, 中文]
-
Exercises on Orthogonal Projection and Least Squares Problem 正交投影與最小二乘法問題練習 [English, 中文]
-
Exercises on Gradient Descent Method 梯度下降法練習 [English, 中文]
-
Exercises on Modelling using First-order ODE 透過一階微分方程建模練習 [English, 中文]
-
Exercises on Numerical Solutions of Differential Equations in Python Python 求微分方程數值解練習 [English, 中文]
-
Exercises on Solutions to Linear First-Order ODEs 線性一階常微分方程解練習 [English, 中文]
-
Exercises on Second-Order Linear Differential Equations 二階線性微分方程練習 [English, 中文]
-
Optimization using Python 透過 Python 進行最優化 Google Colab notebook [Solution 答案]
-
Orthogonal Projection and Least Squares Problem 正交投影與最小二乘法問題 Google Colab notebook [Solution 答案]
-
Gradient Descent Method 梯度下降法 Google Colab notebook [Solution 答案]
-
First Order Differential Equations 一階微分方程 Google Colab notebook [Solution 答案]
-
Higher Order and Systems of Differential Equations 高階微分方程與微分方程組 Google Colab notebook [Solution 答案]
-
Modelling using First-order ODE 透過一階微分方程建模 Google Colab notebook [Solution 答案]
-
Analytic and Numerical Solutions of Differential Equations 微分方程的解析解與數值解 Google Colab notebook [Solution 答案]
-
Advanced Differential Equations 進階微分方程 Google Colab notebook [Solution 答案]
Workshop 3 (Advanced Probability, Statistics, and Data Analysis) 工作坊 3 (進階概率、統計及數據分析):
Topics: Basic probability theory, statistics tools, probability distributions, Markov chain, dimensionality reduction, principal component analysis, clustering, classification ...
主題: 基礎概率論、統計工具、概率分佈、馬可夫鏈、降維、主成分分析、聚類、分類...
(i) Pre-workshop Learning Tasks 工作坊前學習任務:
(ii) Workshop Materials 工作坊資源:
-
Probability and Statistics e-Book 概率及統計電子書
-
Workshop overview 工作坊概覽
-
Probability 概率 [English, 中文]
-
Statistics 統計 [English, 中文]
-
Markov Chains 馬可夫鏈 [English, 中文]
-
Principal Component Analysis (PCA) 主成分分析 [English, 中文]
-
Cluster Analysis 聚類分析 [English, 中文]
-
Exercises on Probability 概率練習 [English, 中文]
-
Exercises on Statistics 統計練習 [English, 中文]
-
Exercises on Markov Chains 馬可夫鏈練習 [English, 中文]
-
Exercises on Principal Component Analysis (PCA) 主成分分析練習 [English, 中文]
-
Exercises on Clustering Algorithms 聚類演算法練習 [English, 中文]
-
Exercises on Agglomerative Hierarchical Clustering 凝聚層次聚類練習 [English, 中文]
-
Probability 概率 Google Colab notebook
-
Statistics 統計 Google Colab notebook
-
Markov Chains 馬可夫鏈 Google Colab notebook
-
Clustering Algorithms 聚類演算法 Google Colab notebook
-
More materials to be posted
Workshop 4-5 (Integrated Mathematical Modelling) 工作坊 4-5 (綜合數學建模):
Topics: Classification, other advanced topics, integrated exercises ...
主題: 分類、其他進階主題、綜合練習...
-
Support Vector Machine (SVM) 支援向量機 [English, 中文]
-
More materials to be posted
Back to top 回到頂部