While measures of central tendency are used to estimate "normal" values of a dataset, measures of dispersion are important for describing the spread of the data, or its variation around a central value. Two distinct samples may have the same mean or median, but completely different levels of variability, or vice versa. A proper description of a set of data should include both of these characteristics. There are various methods that can be used to measure the dispersion of a dataset, each with its own set of advantages and disadvantages.
Locate Dataset and Variable |
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Find Maximum Value | |
View Maximum Values |
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Find Minimum Values and Subtract from Maximum Values |
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View Range |
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Standard Deviations Away From Mean |
Abnormality |
Probability of Occurance |
beyond -3 sd |
extremely subnormal |
0.15% |
-3 to -2 sd |
greatly subnormal |
2.35% |
-2 to -1 sd |
subnormal |
13.5% |
-1 to +1 sd |
normal |
68.0% |
+1 to +2 sd |
above normal |
13.5% |
+2 to +3 sd |
greatly above normal |
2.35% |
beyond +3 sd |
extremely above normal |
0.15% |
Locate Dataset and Variable |
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Select Temporal and Spatial Domains |
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Calculate Standard Deviation Values |
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View Standard Deviation Values |
Equatorial Africa exhibits low standard deviation values of monthly cloud cover compared to regions to its north and south. High standard deviation values correspond to areas with large interannual cloud cover variability. Note that the root mean square anomaly can be substituted for the standard devation if the sample size is sufficiently large. (Devore, Jay L. Probability and Statistics for Engineering and the Sciences. pp. 38-39, 259.) |
Locate Dataset and Variable |
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Select Temporal and Spatial Domains |
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Calculate Root Mean Square Anomaly |
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View Root Mean Square Values |
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Locate Dataset and Variable |
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Select Temporal and Spatial Domains |
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Compute Monthly Climatologies | |
Calculate Interquartile Range |
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View Interquartile Range |
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Locate Dataset and Variable |
*NOTE: This example uses the same dataset and variable as the previous example.
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Select Temporal and Spatial Domains |
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Compute Monthly Climatologies | |
Calculate Median Absolute Deviation |
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View Median Absolute Deviation |
The higher the median absolute deviation, the more variability in the data. Similar to the IQR example, the Amazon Basin exhibits high intraannual precipitation variability, while areas to the north and south exhibit lower precipitation variability. |
Locate Dataset and Variable |
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Select Temporal and Spatial Domains |
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Calculate Spatial Average | |
Find Trimmed Variance |
Calculate the trimmed variance by squaring the value above.
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