| Major Title |
Major in Decision Analytics |
|
Offered to students admitted to Year 1 in |
2025
|
Objectives:
Amidst an upsurge of digital data produced worldwide nowadays, the Major in Decision Analytics aims to equip students with the skills and expertise in leveraging and managing big data in real time, and provide them with solid training in making digitized information a strategic part of critical decision-making and resource allocation with greater clarity and accuracy. Core courses in the curriculum emphasize the fundamental concepts and methodologies of decision analytics which include but not limited to statistical analysis, data mining and data visualization, programming, data structuring, mathematical and statistical modelling and implementation of database systems. Elective courses focus on diverse and applied techniques of decision analytics in multidisciplinary fields.
|
Learning Outcomes:
By the end of this programme, students should be able to:
| PLO 1 : |
apprehend the concepts of decision analytics and its underlying theory in relation to a broad range of related disciplinary academic or professional areas
(by means of coursework, tutorial classes and/or project-based learning in the curriculum) |
| PLO 2 : |
identify and adopt appropriate analytical techniques and tools to extract and classify critical information from structured or unstructured data
(by means of coursework, tutorial classes and/or project-based learning in the curriculum) |
| PLO 3 : |
be proficient with the design and implementation of advanced modelling techniques and database management, and offer effective recommendations for analytic initiatives and solutions
(by means of coursework, tutorial classes and/or project-based learning in the curriculum) |
| PLO 4 : |
evaluate the quality of information from different sources in support of critical decision making, process streamlining and the optimization of resources, and appraise the related ethical issues
(by means of coursework, tutorial classes and/or project-based learning in the curriculum) |
| PLO 5 : |
communicate to people effectively and efficiently with professionalism and accuracy using interactive and dynamic tools to translate technical information and present collaborative and strategic ideas
(by means of coursework, tutorial classes, project-based and/or capstone learning in the curriculum) |
| PLO 6 : |
gain insights into current advances in decision analytics and confidence to solve real-life problems through either project or industrial training
(by means of coursework, tutorial classes, project-based and/or capstone learning in the curriculum) |
|
Impermissible Combinations:
Bachelor of Arts and Sciences in Applied Artificial Intelligence Bachelor of Engineering in Artificial Intelligence and Data Science Bachelor of Engineering in Computer Science Bachelor of Engineering in Data Science and Engineering Bachelor of Statistics Major in Computer Science Major in Risk Management Major in Statistics Minor in Computer Science Minor in Statistics
|
|
Required courses (96 credits)
|
|
|
|
Notes:
1. If the same courses are listed as disciplinary core in both this major (as a second major) and the primary major (or programme/professional core) undertaken by a student, the student must make up the number of credits by taking replacement course(s) stipulated by the second major. Double counting of credits is not permissible.
2. Students should have level 2 or above in HKDSE Mathematics Extended Module 1 or 2 or equivalent to take this major. Students who do not fulfill this requirement are advised to first take MATH1011 University Mathematics I.
3. Students who have completed MATH2014 Multivariable Calculus and Linear Algebra to fulfil the requirement of their primary major should apply for course replacement with MATH2101 Linear Algebra I and MATH2211 Multivariable Calculus in lieu.
4. Students may consider taking the following courses if they wish to pursue a more focused study in the following areas:
a. Biomedical Analytics SDST3021 Modern Biostatistics SDST3607 Statistics in Clinical Medicine and Bio-Medical Research SDST3608 Statistical Genetics SDST3620 Modern Nonparametric Statistics SDST3621 Statistical Data Analysis SDST4022 Omics Data Analysis SDST4023 Medical Image Analysis SDST4602 Multivariate Data Analysis
b. Financial and Risk Analytics SDST3621 Statistical Data Analysis SDST4601 Time-Series Analysis Plus advanced level courses listed for the Major in Risk Management
c. Operational Analytics COMP3251 Algorithm Design MATH3901 Operations Research I MATH4902 Operations Research II SDST3606 Business Logistics
|
Remarks:
Important! Ultimate responsibility rests with students to ensure that the required pre-requisites and co-requisites of selected courses are fulfilled. Students must take and pass all required courses in the curriculum of the declared major in order to satisfy the requirements of the major.
|