Undergraduate Course: Decision-Making under Uncertainty (BUST10013)
Course Outline
| School | Business School | 
College | College of Humanities and Social Science | 
 
| Course type | Standard | 
Availability | Available to all students | 
 
| Credit level (Normal year taken) | SCQF Level 10 (Year 3 Undergraduate) | 
Credits | 20 | 
 
| Home subject area | Business Studies | 
Other subject area | None | 
   
| Course website | 
None | 
Taught in Gaelic? | No | 
 
| Course description | Methods for decision making under uncertainty: topics from stochastic programming, probabilistic dynamic programming, Markov processes and decision theory, with applications. | 
 
 
Entry Requirements (not applicable to Visiting Students)
| Pre-requisites | 
 Students MUST have passed:  
  | 
Co-requisites |  | 
 
| Prohibited Combinations |  | 
Other requirements |  Pre-requisite: Business Studies Honours entry. 
Note: For Economics with Management Science, and Mathematics and Business Studies programmes EITHER Mathematical Programming (BUST10011) OR Decision Making Under Uncertainty is a mandatory course in Year 4. | 
 
| Additional Costs |  None | 
 
 
Information for Visiting Students 
| Pre-requisites | Visiting students should have at least 3 Business Studies courses at grade B or above (or be predicted to obtain this). We will only consider University/College level courses.  
 
 | 
 
| Displayed in Visiting Students Prospectus? | Yes | 
 
 
Course Delivery Information
 |  
| Delivery period: 2014/15  Semester 1, Available to all students (SV1) 
  
 | 
Learn enabled:  Yes | 
Quota:  None | 
 | 
 
Web Timetable  | 
	
Web Timetable | 
	| Class Delivery Information | 
	There will be 4 optional review tutorials. To accommodate students' schedules, students will sign up for either the Thursday or Friday series of DMU tutorials:  
Thursdays 15.10-16.00 on 6 November(Week 8), 13 November(Week 9), 20 November (Week 10), 27 November (Week 11) venue tba. 
Fridays 12.10-13.00pm on 7 November(Week 8), 14 November (Week 9), 21 November (Week 10), 28 November (Week 11) venue tba. | 
 
 
| Course Start Date | 
15/09/2014 | 
 
| Breakdown of Learning and Teaching activities (Further Info) | 
 
 Total Hours:
200
(
 Lecture Hours 20,
 Summative Assessment Hours 2,
 Revision Session Hours 2,
 Programme Level Learning and Teaching Hours 4,
Directed Learning and Independent Learning Hours
172 )
 | 
 
| Additional Notes | 
 | 
 
| Breakdown of Assessment Methods (Further Info) | 
 
  Written Exam
70 %,
Coursework
30 %,
Practical Exam
0 %
 | 
 
| Exam Information | 
 
    | Exam Diet | 
    Paper Name | 
    Hours & Minutes | 
    
	 | 
  
| Main Exam Diet S2 (April/May) |  | 2:00 |  |  
 
 |  
| Delivery period: 2014/15  Semester 1, Part-year visiting students only (VV1) 
  
 | 
Learn enabled:  No | 
Quota:  None | 
 | 
 
Web Timetable  | 
	
Web Timetable | 
	| Class Delivery Information | 
	There will be 4 optional review tutorials. To accommodate students' schedules, students will sign up for either the Thursday or Friday series of DMU tutorials:  
Thursdays 15.10-16.00 on 6 November(Week 8), 13 November(Week 9), 20 November (Week 10), 27 November (Week 11) venue tba. 
Fridays 12.10-13.00pm on 7 November(Week 8), 14 November (Week 9), 21 November (Week 10), 28 November (Week 11) venue tba. | 
 
 
| Course Start Date | 
15/09/2014 | 
 
| Breakdown of Learning and Teaching activities (Further Info) | 
 
 Total Hours:
200
(
 Lecture Hours 20,
 Revision Session Hours 2,
 Programme Level Learning and Teaching Hours 4,
Directed Learning and Independent Learning Hours
174 )
 | 
 
| Additional Notes | 
 | 
 
| Breakdown of Assessment Methods (Further Info) | 
 
  Written Exam
0 %,
Coursework
100 %,
Practical Exam
0 %
 | 
 
| No Exam Information | 
 
Summary of Intended Learning Outcomes 
Objectives/Learning Outcomes  
  
Knowledge & Understanding 
On completion of the course students should: 
a) be able to discuss critically the practical use of the techniques covered; 
b) be able to use the modelling techniques covered to structure management problems; 
c) be able to solve models built using the techniques covered; 
d) be able to make inferences about a management problem based on the solution of a model built using the techniques covered. 
 
Cognitive Skills 
On completion of the course students should: 
a) demonstrate that they can identify which of the techniques covered is most suitable for a management problem; 
b) demonstrate that they can discuss the results of their analysis of a management problem in written reports. 
  
Key Skills 
On completion of the course students should: 
a) demonstrate that they can build and analyse a model of a real world management problem involving uncertainty; 
b) demonstrate their ability to apply their computer skills to support the analysis of a management problem involving uncertainty; 
c) demonstrate that they can present the findings of a quantitative analysis in a concise written report. 
 
Subject Specific Skills 
On completion of the course students should: 
a) have developed their modelling skills. | 
 
 
Assessment Information 
One project on Markov decision processes 30%; final degree exam 70% 
Visiting Student Variant Assessment 
One project on Markov decision processes 50% and one essay (min 3,000 words) 50%. |  
 
Special Arrangements 
| None |   
 
Additional Information 
| Academic description | 
Not entered | 
 
| Syllabus | 
The course covers four modelling techniques: Markov Chains, Markov Decision Processes, Decision Analysis and Sequential Sampling. | 
 
| Transferable skills | 
Not entered | 
 
| Reading list | 
Recommended: 
1. F S Hillier & G J Lieberman, Introduction to Operations Research (McGraw-Hill). 
2. W L Winston, Operations Research: Applications and Algorithms (Duxbury). | 
 
| Study Abroad | 
Not entered | 
 
| Study Pattern | 
Not entered | 
 
| Keywords | DMU, decision analysis, Markov processes, probabilistic dynamic programming | 
 
 
Contacts 
| Course organiser | Dr Tom Archibald 
Tel: (0131 6)50 4604 
Email: T.Archibald@ed.ac.uk | 
Course secretary | Ms Patricia Ward-Scaltsas 
Tel: (0131 6)50 3823 
Email: Patricia.Ward-Scaltsas@ed.ac.uk | 
   
 
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© Copyright 2014 The University of Edinburgh -  29 August 2014 3:33 am 
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