Statistical Modelling
Module title | Statistical Modelling |
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Module code | BIOM4025 |
Academic year | 2024/5 |
Credits | 15 |
Module staff | Dr Erik Postma (Convenor) |
Duration: Term | 1 | 2 | 3 |
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Duration: Weeks | 12 | 0 | 0 |
Number students taking module (anticipated) | 100 |
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Module description
Biologicaldata are famously complicated. However, modern statistical methods can accommodate many of these complications, and others can be avoided through careful study design and data collection. This module uses a series of lectures, Q&A sessions, interactive exercises andpracticalsto guide you through modern statistical philosophies and methods.It provides you with one of the most important transferable skills,both in and outside of academia, and it optimally preparesyou for your dissertation project. The main software platform for the module is ’R’,which is powerful, flexible, and free. To accommodate students from a range of backgroundsand with different levelsof prior experience,we start with the basics and gradually add complexity. By the end of the module, you will understand how to design a study, handle the data, analyse them, interpret theresults, and provide graphical and written summaries. Many examples used will be drawn from recent research in ecology, evolution and environmental sciences.
Module aims - intentions of the module
Statistical modeling is an integral part of all quantitative research. Thereby this moduleprovides key transferable skills in experimental design, data collection andhandling, statistical modelling, and programming. More generally, it promotes quantitative and logical thinking.
The modern, powerful methods of (generalised) linear andlinearmixed effects modelling will be taught using a mixture of lectures and computer practicals, often using the ‘R’ programming language.Using a combination of real and simulated data, the module will emphasise the possibilities and limitations of the various statistical approaches, without losing sight of their real-world application, and the importance of careful experimental design and data collection.
The module introduction will provide an overview of the history and philosophy of statistical modelling.Itsubsequentlyintroducesyou to a series of classical statistical tests,andshows how these can all be accommodated within a linear modelling framework. You will learn how to interpret model output, how to do significance testing, and different approaches to model simplification and selection.You will then learn how generalised linear models allow for the analysis of data that violate the assumptions of normalityand constant variance, and how mixed models can accommodate non-independent observations and thereby account for pseudoreplication.
Intended Learning Outcomes (ILOs)
ILO: Module-specific skills
On successfully completing the module you will be able to...
- 1. Discuss, with a scientific vocabulary, the philosophy of statistical analysis in research
- 2. Debate the relative merits of different analyses to test relevant hypotheses
- 3. Apply and interpret the results of statistical models
- 4. Criticise, and adapt, statistical models to cope with atypical error structures and non-independence
ILO: Discipline-specific skills
On successfully completing the module you will be able to...
- 5. Communicate knowledge and understanding in ecology, evolution, environmental and social sciences
- 6. Describe and critically evaluate aspects of research and communication with reference to reviews and research articles
- 7. With limited guidance, deploy established techniques of analysis and enquiry in scientific endeavour
ILO: Personal and key skills
On successfully completing the module you will be able to...
- 8. Communicate ideas effectively and professionally by written, oral and visual means
- 9. Study autonomously and undertake projects with minimum guidance
- 10. Select and properly manage information drawn from books, journals, and the internet
- 11. Interact effectively in a group
Syllabus plan
The module will be delivered using a hybrid approach of pre-recorded lectures and face-to-face Q&A sessions. Students complete practicals independently, with help available online and during regular in-person help sessions. Each practical is concluded by a face-to-face discussion session.
Topic 1: Principles of statistical modelling: Lectures on null-hypothesis testing, p-values and their limitations, statistical power, different types of data, mean and variance, the normal distribution. Computer practical introducing the ‘R’ software environment.
Topic 2: Basic statistical tests: Lectures on correlation, regression, t-test and ANOVA, including interpretation, significance testing, model diagnostics, and multiple testing. Computer practical focussing on their practical implementation, as well as data handling and plotting.
Topic 3: Linear models including continuous and categorical predictors and their interactions: Lectures on the interpretation of model output, significance testing, model simplification and selection, prediction, model diagnostics, Computer practical focussing on their practical implementation in R and the reporting of results.
Topic 4: Generalised linear models: Lectures on Poisson and binomial error structures and link functions, significance testing, overdispersion and prediction. Computer practical on fitting generalised linear models and visualising results in R.
Topic 5: Mixed models: Lectures on non-independence and pseudoreplication, fixed versus random effects, interpretation of model output, significance testing. Computer practical on the practical implementation of mixed models and dealing with non-independence in R.
Learning activities and teaching methods (given in hours of study time)
Scheduled Learning and Teaching Activities | Guided independent study | Placement / study abroad |
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34 | 116 | 0 |
Details of learning activities and teaching methods
Category | Hours of study time | Description |
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Guided independent study | 10 | Pre-recorded lectures (10 x 1 hour) |
Scheduled learning and teaching | 10 | Lecture Q&A sessions (10 x 1 hour) |
Scheduled Learning and Teaching Activities | 10 | Practical Q&A sessions (5 x 2 hours) |
Scheduled Learning and Teaching Activities | 14 | Help and review sessions (12 x 1 hour and 1 x 2 hours) |
Guided independent study | 120 | Engage with practical materials, additional research and reading, preparation for module assessments |
Formative assessment
Form of assessment | Size of the assessment (eg length / duration) | ILOs assessed | Feedback method |
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Short-answer questions during Q&A sessions | Ongoing throughout the module | 1-11 | Oral |
Lecture tasks available on ELE | Made available throughout the module | 1-11 | Written |
Summative assessment (% of credit)
Coursework | Written exams | Practical exams |
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50 | 50 | 0 |
Details of summative assessment
Form of assessment | % of credit | Size of the assessment (eg length / duration) | ILOs assessed | Feedback method |
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Short-answer questions during practical sessions | 10 | ELE quiz | 1-8 | Written |
Statistical modelling problem sheet | 40 | Question sheet | 1-8 | Written |
Short-answer test | 50 | Timed (1 hour) ELE quiz | 1-8 | Written |
0 |
Details of re-assessment (where required by referral or deferral)
Original form of assessment | Form of re-assessment | ILOs re-assessed | Timescale for re-assessment |
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Short-answer questions during practical sessions | Written short-answer questions | 1-8 | During an appropriate specified time period before the end of July |
Statistical modelling problem sheet | Statistical modelling problem sheet | 1-8 | During an appropriate specified time period before the end of July |
Short-answer test | Timed (1 hour) ELE quiz | 1-8 | During an appropriate specified time period before the end of July |
Re-assessment notes
Deferral – if you miss an assessment for certificated reasons judged acceptable by the Mitigation Committee, you will normally be either deferred in the assessment or an extension may be granted. The mark given for a re-assessment taken as a result of deferral will not be capped and will be treated as it would be if it were your first attempt at the assessment.
Referral – if you have failed the module overall (i.e. a final overall module mark of less than 50%) you will be required to redo the original assessment as necessary. The mark given for a re-assessment taken as a result of referral will be capped at 50%.
Indicative learning resources - Basic reading
- Crawley, M. (2015) Statistics: An Introduction Using R. John Wiley and Sons
Indicative learning resources - Web based and electronic resources
- ELE page: https://ele.exeter.ac.uk/course/view.php?id=9280
- CRAN and R support webpages, online forums
Indicative learning resources - Other resources
- Class contributions to web forum (peer support)
Credit value | 15 |
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Module ECTS | 7.5 |
Module pre-requisites | None |
Module co-requisites | None |
NQF level (module) | 7 |
Available as distance learning? | No |
Origin date | 19/05/2014 |
Last revision date | 26/02/2024 |