Kay's Geography |
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Unit GG3 - Spearman's Rank |
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Spearmans Rank correlation coefficient
Two things correlate when they vary together. For example, we expect land values to fall with distance from the city centre.
A correlation can easily be drawn as a scattergraph, but the most precise way to compare several pairs of data is to use a statistical test - this establishes whether the correlation is really significant or if it could have been the result of chance alone.
Spearmans Rank correlation coefficient is a technique which can be used to summarise the strength and direction (negative or positive) of a relationship between two variables.
The result will always be between 1 and minus 1.
Method - calculating the coefficient


Significance testing
To check whether your answer could be the result of chance, test the significance of the relationship. This can be done using a graph (Waugh p637). Sometimes in exam questions you will be given a table instead.
A word of warning
Spearmans Rank correlation coefficient - Try it!
The following exercise is based on the worked example which appears in B Lenon & P Cleves (1994) Fieldwork Techniques and Projects in Geography pub. Collins Educational (pp139-140).
In this exercise we have 12 settlements ranging in size from 220 inhabitants to over 15,000. We would expect that larger villages and towns would have more services than smaller ones. We are going to see if there is a correlation in our sample.
Hypothesis: The larger a settlement, the greater the number of services it has.
settlement population |
rank |
number of services |
rank |
Difference between ranks (d) |
d² |
220 |
4 |
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350 |
3 |
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1016 |
11 |
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2362 |
19 |
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4981 |
35 |
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5632 |
41 |
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6781 |
73 |
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6793 |
43 |
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7982 |
81 |
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8763 |
72 |
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10714 |
87 |
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15739 |
114 |
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| x d² = |


