STAT Courses
Course Categories
- Courses For the Non-Major
Undergraduates who are not majored in statistics but interested in an introduction to the basic principles and techniques of probability and statistics should consider STAT1011 (Introduction to Statistics) and/or STAT1012 (Statistics for Life Sciences). Students who would like to minor in Risk Management Science are required to register RMS2001 (Introduction to Risk Management Science). For details, please refer to [links] for Major/Minor Study Schemes.
- Foundation Courses
The core courses STAT2001 and STAT2006 are calculus-based introductions to probability and statistics, respectively, and are designed for students planning to continue with more advanced theory and methods courses. STAT3008 covers topics of applied regression analysis and serves as an intermediate level of statistics course. In general, 2000- and 3000-level courses are set up mainly for foundation/intermediate level study. They are usually taken by juniors/sophomores.
- Advanced Courses
Several more advanced theory and methods courses take one or more of the foundation courses as prerequisites. Among these are STAT4001 (Data Mining and Statistical Learning), STAT4002 (Multivariate Techniques with Business Applications), STAT4003 (Statistical Inference), STAT4004 (Actuarial Science), STAT4005 (Time Series), STAT4006 (Categorical Data Analysis), STAT4008 (Survival Modelling), STAT4010 (Bayesian Learning) and STAT4012 (Statistical Principles of Deep Learning with Business Applications). For RMSC majors/minors, advanced courses including RMSC4001 (Simulation Methods for Risk Management Science and Finance), RMSC4002 (Financial Data Analytics with Machine Learning), RMSC4003 (Statistical Modelling in Financial Markets), RMSC4004 (Theory of Risk and Insurance, RMSC4005 (Stochastic Calculus for Finance and Risk) and RMSC4007 (Risk Management with Derivative Concepts) are usually offered.
Course Code | Course Title | Unit |
STAT1011 | Introduction to Statistics |
3
|
STAT1012 | Statistics for Life Sciences |
3
|
STAT1013 | Data Science Toolbox |
3
|
STAT2001 | Basic Concepts in Statistics and Probability I |
3
|
STAT2005 | Programming Languages for Statistics |
3
|
STAT2006 | Basic Concepts in Statistics and Probability II |
3
|
STAT2011 | Workshop on Data Exploration and Technical Writing |
3
|
STAT2102 | Basic Statistical Concepts and Methods II |
3
|
STAT3001 | Foundation of Financial and Managerial Statistics |
3
|
STAT3003 | Survey Methods |
3
|
STAT3005 | Nonparametric Statistics |
3
|
STAT3006 | Statistical Computing |
3
|
STAT3007 | Introduction to Stochastic Processes |
3
|
STAT3008 | Applied Regression Analysis |
3
|
STAT3009 | Recommender Systems |
3
|
STAT3011 | Workshop on Data Analysis and Statistical Computing |
3
|
STAT3210 | Statistical Techniques in Life Sciences |
3
|
STAT4001 | Data Mining and Statistical Learning |
3
|
STAT4002 | Multivariate Techniques with Business Applications |
3
|
STAT4003 | Statistical Inference |
3
|
STAT4004 | Actuarial Science |
3
|
STAT4005 | Time Series |
3
|
STAT4006 | Categorical Data Analysis |
3
|
STAT4008 | Survival Modelling |
3
|
STAT4010 | Bayesian Learning |
3
|
STAT4011 | Statistics Projects |
3
|
STAT4012 | Statistical Principles of Deep Learning with Business Applications |
3
|
STAT4013 | Practicum |
3
|
STAT5005 | Advanced Probability Theory |
3
|
STAT5010 | Advanced Statistical Inference |
3
|
STAT5020 | Topics in Multivariate Analysis |
3
|
STAT5030 | Linear Models |
3
|
STAT5050 | Advanced Statistical Computing | 3 |
STAT5060 | Advanced Modeling and Data Analysis |
3
|
STAR2000 | Undergraduate Research in Science I |
1
|
STAR2050 | Seminar I |
1
|
STAR3000 | Undergraduate Research in Science II |
2
|
STAR3050 | Seminar II |
1
|
STAR4000 | Undergraduate Research in Science III |
3
|
STAR4050 | Seminar III |
1
|
*Note: If any discrepancy arises, the version on CUSIS should be treated as the official version.
STAT1011 Introduction to Statistics
STAT1012 Statistics for Life Sciences
STAT2001 Basic Concepts in Statistics and Probability I
STAT2005 Programming Languages for Statistics
STAT2006 Basic Concepts in Statistics and Probability II
STAT2011 Workshop on Data Exploration and Technical Writing
STAT2102 Basic Statistical Concepts and Methods II
STAT3001 Foundation of Financial and Managerial Statistics
STAT3003 Survey Methods
STAT3005 Nonparametric Statistics
theoretical justification is also provided. The content covers three broad themes:
(i) rank-type and order-type methods for handling location, dispersion, correlation, distribution and regression problems,
(ii) resampling-type procedures for testing and assessing precision, and
(iii) smoothing-type techniques for estimation and prediction. Topics include Wilcoxon signed-rank test, Mann-Whitney rank sum test, Spearman’s rho, Kendall’s tau, Kruskal-Wallis test, Kolmogorov-Smirnov test, bootstrapping, Jackknife, subsampling, permutation tests, kernel method, k-nearest neighbour, tree-based method, classification, etc.
STAT3006 Statistical Computing
STAT3007 Introduction to Stochastic Processes
STAT3008 Applied Regression Analysis
STAT3009 Recommender Systems
Commercial sites such as search engines, advertisers and media (e.g., Netflix, Amazon, Taobao) employ recommender systems for content recommendation, predicting customer behavior, compliance, or preference. This course provides an overview of predictive models for recommender systems, including content-based collaborative algorithms, latent factor models, and deep learning models, as well as Python implementation, evaluation and metrics for recommender systems. Students will learn about principles and algorithms for turning training data into effective automated predictions. We will cover:
- Recommender systems implementation and existing libraries
- Correlation-based collaborative filtering, latent factor models, neural collaborative filtering, deep learning models
- Recommender systems, link prediction, Top-K recommendation, Tuning, bagging, ensemble in recommender systems
STAT3011 Workshop on Data Analysis and Statistical Computing
STAT3210 Statistical Techniques in Life Sciences
STAT4001 Data Mining and Statistical Learning
STAT4002 Multivariate Techniques with Business Applications
STAT4003 Statistical Inference
STAT4004 Actuarial Science
STAT4005 Time Series
STAT4006 Categorical Data Analysis
STAT4008 Survival Modelling
STAT4010 Bayesian Learning
STAT4011 Statistics Projects
STAT4012 Statistical Principles of Deep Learning with Business Applications
STAR2000 Undergraduate Research in Science I
STAR2050 Seminar I
STAR3000 Undergraduate Research in Science II
STAR3050 Seminar II
STAR4000 Undergraduate Research in Science II
STAR4050 Seminar III
STAT1011 Introduction to Statistics
STAT1012 Statistics for Life Sciences
STAT1013 Data Science Toolbox
STAT2001 Basic Concepts in Statistics and Probability I
STAT2005 Programming Languages for Statistics
STAT2006 Basic Concepts in Statistics and Probability II
STAT2011 Workshop on Data Exploration and Technical Writing
STAT2102 Basic Statistical Concepts and Methods II
STAT3001 Foundation of Financial and Managerial Statistics
STAT3003 Survey Methods
STAT3005 Nonparametric Statistics
theoretical justification is also provided. The content covers three broad themes:
(i) rank-type and order-type methods for handling location, dispersion, correlation, distribution and regression problems,
(ii) resampling-type procedures for testing and assessing precision, and
(iii) smoothing-type techniques for estimation and prediction. Topics include Wilcoxon signed-rank test, Mann-Whitney rank sum test, Spearman’s rho, Kendall’s tau, Kruskal-Wallis test, Kolmogorov-Smirnov test, bootstrapping, Jackknife, subsampling, permutation tests, kernel method, k-nearest neighbour, tree-based method, classification, etc.
STAT3006 Statistical Computing
STAT3007 Introduction to Stochastic Processes
STAT3008 Applied Regression Analysis
STAT3009 Recommender Systems
Commercial sites such as search engines, advertisers and media (e.g., Netflix, Amazon, Taobao) employ recommender systems for content recommendation, predicting customer behavior, compliance, or preference. This course provides an overview of predictive models for recommender systems, including content-based collaborative algorithms, latent factor models, and deep learning models, as well as Python implementation, evaluation and metrics for recommender systems. Students will learn about principles and algorithms for turning training data into effective automated predictions. We will cover:
- Recommender systems implementation and existing libraries
- Correlation-based collaborative filtering, latent factor models, neural collaborative filtering, deep learning models
- Recommender systems, link prediction, Top-K recommendation, Tuning, bagging, ensemble in recommender systems