2023/24 Undergraduate Module Catalogue
GEOG1400 Digital Geographies
20 creditsClass Size: 250
Module manager: Alexis Comber
Email: a.comber@leeds.ac.uk
Taught: Semester 2 (Jan to Jun) View Timetable
Year running 2023/24
Module replaces
GEOG1081This module is not approved as a discovery module
Module summary
Digital Geographies is an exciting module offering students a beginner’s guide to the important and rapidly changing world of geographical data analysis. It blends an understanding with core numerical skills and conceptual understandings of how space and spatial relationships can be represented. A combination of weekly lectures and computer practicals introduce students to basic techniques of spatial data analysis, hypothesis testing and mapping, the potential uses and applications of data from policing to planning, and the opportunities presented by the many new forms of data. Critically, students learn how to determine the reliability and statistical representativeness of data, to link different data, to interpret the results of different statistical tests, to create spatial data and to undertake spatial analysis, linking across the human (social) and physical (environmental) domains.Objectives
The overall aims of this module are to:- embed an understanding of geographical data (digital spatial data literacy) and data handling skills within the physical and human geography curricula
- develop students’ understanding of spatial, numerical, statistical and GIS-related theory
- enhance students’ numeric skills and increase their ability to handle, process and analysis of digital geographic data
- train students in a number of vital skills in how to perform basic data and spatial data manipulations, summaries and mapping.
- enable students to develop specific skills in using statistical software (e.g. GIS, R/RStudio, Excel) for data analysis, manipulation producing summary statistics and visualisations
- provide students with a foundational understanding of spatial and geographic data and quantitative methods to enable them to have a greater choice of optional and discovery modules at levels 2 and 3
Learning outcomes
At the end of this module students will be able:
1. to understand different sources and types of data and spatial data
2. to demonstrate an ability to investigate and summarise the statistical properties of non-spatial and spatial data
3. to produce maps, under cartographic conventions
4. to undertake statistical and spatial analyses of spatial data using statistical software and GIS
Skills outcomes
The module will be built around the learning and teaching of explicit core QAA sub-specific skills (https://www.qaa.ac.uk/docs/qaa/sbs/sbs-geography-22.pdf):
From 3.30 of the QAA
spatial awareness and observation
recognising the moral, ethical and safety issues involved in all aspects of geographical enquiry
employing a variety of social survey methods, for example, questionnaire surveys and semi-structured interviews
employing a variety of science laboratory skills and methods, for example, soil, water and sediment sample preparation and analysis
primary data generation, collection and recording, and the use of secondary data sets, both quantitative and qualitative
critically evaluating, interpreting and combining different types of geographical evidence, for example, texts, visual and material culture, archival data, maps, digitised and laboratory data
analysis and problem-solving through quantitative and qualitative methods
applying methods for the collection and analysis of spatial and environmental information, for example, by using GIS, remote sensing, statistical and mathematical modelling
preparing effective maps, diagrams and visualisations.
From 3.32 of the AQQ
understanding the appropriate and ethical use of evidence and data
numeracy and statistical literacy
abstraction and synthesis of information
taking responsibility for learning and reflection upon that learning.
From 3.33 of the AQQ
retrieval, handling and archiving of datasets
an understanding of intellectual property and data privacy
the ability to take creative approaches to problem-solving.
Syllabus
The module will have the following indicative structure:
1. Introduction to GIS and types of data / spatial data: why geography is special!
2. Introduction descriptive statistics and sources of data (social and environmental)
3. Scale, Cartography and Projections
4. Spatial analysis I, manipulating spatial data (indices, composites, spatial composites, etc)
5. Spatial analysis II, more advanced spatial analysis (distances, access, viewsheds)
Reading Week
6. Experimental design, data collection and samples, introduction to the module survey results
7. More on sampling a, bias and representativeness, new forms of data (citizen science, social media etc)
8. Hypothesis Testing I Statistical Tests of Difference and Significance
9. Hypothesis testing II: Parametric and Nonparametric tests
10. Hypothesis Testing III: Regression for inference and prediction
Leaving the final week free allows for a reading work, an additional topic, a revision session etc.
Teaching methods
Delivery type | Number | Length hours | Student hours |
Drop-in Session | 9 | 1.00 | 9.00 |
Lecture | 10 | 2.00 | 20.00 |
Practical | 9 | 1.00 | 9.00 |
Practical | 10 | 2.00 | 20.00 |
Private study hours | 142.00 | ||
Total Contact hours | 58.00 | ||
Total hours (100hr per 10 credits) | 200.00 |
Private study
Private Study and Independent Learning - Detail private study and independent learning outside formal classes as a guide to students about what is expected from them for the module• c. 50 hours to additional reading to enhance their understanding of themes introduced in lectures and practicals;
• c. 32 hours to preparation for practicals and the fieldwork;
• c. 22 hours to reading and other preparation for the class test;
• c. 50 hours to reading and revision in preparation for the end-of-module project report
Opportunities for Formative Feedback
Each practical is formative and will have self-test questions with answers against which students can test their understanding and data manipulation skills: students will be able to compare their “results” and understanding with model answers. Staff will be able to monitor performance in practicals.Additionally, each week there will be optional, pre-recorded maths support sessions, intended to help students who have not studied maths or science at A-level.
Methods of assessment
Coursework
Assessment type | Notes | % of formal assessment |
Portfolio | . | 50.00 |
In-course MCQ | . | 50.00 |
Total percentage (Assessment Coursework) | 100.00 |
Normally resits will be assessed by the same methodology as the first attempt, unless otherwise stated
Reading list
The reading list is available from the Library websiteLast updated: 21/09/2023
Browse Other Catalogues
- Undergraduate module catalogue
- Taught Postgraduate module catalogue
- Undergraduate programme catalogue
- Taught Postgraduate programme catalogue
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