Undergraduate Course: Statistical Computing (MATH10093)
Course Outline
| School | School of Mathematics | 
College | College of Science and Engineering | 
 
| Credit level (Normal year taken) | SCQF Level 10 (Year 3 Undergraduate) | 
Availability | Available to all students | 
 
| SCQF Credits | 10 | 
ECTS Credits | 5 | 
 
 
| Summary | This course provides an introduction to programming within the statistical package R. Various computer intensive statistical algorithms will be discussed and their implementation in R will be investigated. | 
 
| Course description | 
    
    Topics to be covered include : 
- basic commands of R (including plotting graphics); 
- data structures and data manipulation; 
- writing functions and scripts; 
- optimising functions in R; and 
- programming statistical techniques and interpreting the results (including bootstrap algorithms).
    
    
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Entry Requirements (not applicable to Visiting Students)
| Pre-requisites | 
 Students MUST have passed:    
Statistical Methodology (MATH10095)  
  | 
Co-requisites |  | 
 
| Prohibited Combinations |  | 
Other requirements |  None | 
 
 
Information for Visiting Students 
| Pre-requisites | Visiting students are advised to check that they have studied the material covered in the syllabus of any pre-requisite course listed above before enrolling. Visiting students are advised to check that they have studied the material covered in the syllabus of each prerequisite course before enrolling. | 
 
		| High Demand Course? | 
		Yes | 
     
 
Course Delivery Information
 |  
| Academic year 2020/21, Available to all students (SV1) 
  
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Quota:  None | 
 
| Course Start | 
Semester 2 | 
 
Timetable  | 
	
Timetable | 
| Learning and Teaching activities (Further Info) | 
 
 Total Hours:
100
(
 Lecture Hours 8,
 Supervised Practical/Workshop/Studio Hours 16,
 Programme Level Learning and Teaching Hours 2,
Directed Learning and Independent Learning Hours
74 )
 | 
 
| Assessment (Further Info) | 
 
  Written Exam
0 %,
Coursework
100 %,
Practical Exam
0 %
 | 
 
 
| Additional Information (Assessment) | 
Coursework 100% | 
 
| Feedback | 
Not entered | 
 
| No Exam Information | 
 
Learning Outcomes 
    On completion of this course, the student will be able to:
    
        - Write structured code for reproducible statistical data analysis
 - Construct simulation studies for given statistical models to assess the estimation and prediction performance of numerical statistical methods
 - Choose, implement, and analyse computer intensive statistical methods for a given problem
 - Correctly interpret the output of numerical statistical methods in their motivating contexts
 - Apply proper scoring rules to out-of-sample prediction analysis and model selection
 
     
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Reading List 
Crawley. M. (2013). The R Book (2nd edition). Wiley. 
Venables, W. N. and Ripley, B. D., (2002). Modern Applied Statistics with S (4th edition). Springer. |   
 
Additional Information
| Graduate Attributes and Skills | 
Not entered | 
 
| Keywords | SComp,Statistics,Computing | 
 
 
Contacts 
| Course organiser | Prof Finn Lindgren 
Tel: (0131 6)50 5769 
Email: Finn.Lindgren@ed.ac.uk | 
Course secretary | Mr Christopher Palmer 
Tel: (0131 6)50 5060 
Email: chris.palmer@ed.ac.uk | 
   
 
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