Description
Module description
This module provides a working knowledge of the statistical theory and methods used to comprehend spatial patterns, whether the latter be distributions of settlements across a landscape, densities of artefacts across a site or region, or different kinds of archaeological sampling procedure. Students learn the fundamental differences between spatial and non-spatial statistics, the design of appropriate sampling strategies for fieldwork, geostatistical methods (e.g. kriging), predictive modelling through logistic regression and more spatially-sensitive versions (e.g. geographically-weighted regression) as well as the multi-scalar analysis of point patterns (e.g. K functions and related methods). They develop practical familiarity with the R statistical package, which is the premier Open Source software environment for statistical analysis. The module is suitable for all those interested in spatial analysis (including those with no prior training in statistics or GIS). However, many students welcome the opportunity to learn a complete workflow from data extraction through to analysis and presentation of results (using the elegant links between GRASS GIS and R).
The module is taught using a combination of lectures, practical sessions and tutorials in the Institute's AGIS laboratory and is assessed via a portfolio of analytical work and one essay. It would particularly benefit those who have an interest in statistically-supported approaches to spatial phenomena. However, there are no pre-requisites and the module is open to those with no prior training in statistics or GIS.
Module aims
The course aims to provide:
• A working knowledge of non-spatial statistical methods that are widely used in conjunction with GIS;
• An understanding of the role of spatial sampling in archaeology
• A working knowledge of both basic and more advanced spatial statistics;
• A basic knowledge of grounded network analysis;
Learning outcomes
On successful completion of the course, students should:
• An understanding of the differences between scientific and other forms of reasoning;
• The ability to use quantitative data to support an argument;
• The application of acquired knowledge.
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Module deliveries for 2024/25 academic year
Last updated
This module description was last updated on 19th August 2024.
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