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A measure of statistical dispersion is a real number that is zero if all the data are identical, and increases as the data are more diverse. An important measure of dispersion is the standard deviation, the square root of the variance (which is itself a measure of dispersion).
Other such measures include the range, the interquartile range, and the average absolute deviation, and, in the case of categorical random variables, the discrete entropy. None of these can be negative; their least possible value is zero.
A measure of statistical dispersion is particularly useful if it is location invariant, and linear in scale. So if a random variable X has a dispersion of SX then a linear transformation Y = aX + b for real a and b should have dispersion SY = aSX. One of the forms in which statistical variability is realized in the emprical sciences is that of differences in repeated measurements of the same quantity.
In the physical sciences, such variability may result only from random measurement errors: instrument measurements are often not perfectly precise and accurate. One may assume that the quantity being measured is unchanging and stable, and that the variation between measurements is due to observational error.
In the biological sciences, this assumption is false: the variation observed might be intrinsic to the phenomenon: distinct members of a population differ greatly. This is also seen in the arena of manufactured products; even there, the meticulous scientist finds idiosyncracy of sampled items.
The simple model of a stable quantity is preferred when it is tenable. Each phenomenon must be examined to see if it warrants such a simplification.
See also summary statistics.
StatisticsStatistics is the science and practice of developing human knowledge through the use of empirical data. It is based on statistical theory which is a branch of applied mathematics. Within statistical theory, randomness and uncertainty are modelled by proba