Summary statistics

In descriptive statistics, summary statistics are used to summarize a set of observations, in order to communicate the largest amount of information as simply as possible. Statisticians commonly try to describe the observations in

Box plot of the Michelson–Morley experiment, showing several summary statistics.

A common collection of order statistics used as summary statistics are the five-number summary, sometimes extended to a seven-number summary, and the associated box plot.

Entries in an analysis of variance table can also be regarded as summary statistics.[1]

Examples

Location

Common measures of location, or central tendency, are the arithmetic mean, median, mode, and interquartile mean.[2][3]

Spread

Common measures of statistical dispersion are the standard deviation, variance, range, interquartile range, absolute deviation, mean absolute difference and the distance standard deviation. Measures that assess spread in comparison to the typical size of data values include the coefficient of variation.

The Gini coefficient was originally developed to measure income inequality and is equivalent to one of the L-moments.

A simple summary of a dataset is sometimes given by quoting particular order statistics as approximations to selected percentiles of a distribution.

Shape

Common measures of the shape of a distribution are skewness or kurtosis, while alternatives can be based on L-moments. A different measure is the distance skewness, for which a value of zero implies central symmetry.

Dependence

The common measure of dependence between paired random variables is the Pearson product-moment correlation coefficient, while a common alternative summary statistic is Spearman's rank correlation coefficient. A value of zero for the distance correlation implies independence.

Human perception of summary statistics

Humans efficiently use summary statistics to quickly perceive the gist of auditory and visual information.[4][5][6]

See also

References

  1. Upton, G., Cook, I. (2006). Oxford Dictionary of Statistics, OUP. ISBN 978-0-19-954145-4
  2. Bullen, P. (2003). Handbook of Means and Their Inequalities. Springer.
  3. Grabisch, M.; Marichal, J.L.; Mesiar, R.; Pap, E. (2009). Aggregation Functions. Oxford University Press.
  4. Piazza, Elise A.; Sweeny, Timothy D.; Wessel, David; Silver, Michael A.; Whitney, David (2013). "Humans Use Summary Statistics to Perceive Auditory Sequences". Psychological Science. 24 (8): 1389–1397. doi:10.1177/0956797612473759. PMC 4381997. PMID 23761928.
  5. Alexander, R. G.; Schmidt, J.; Zelinsky, G. Z. (2014). "Are summary statistics enough? Evidence for the importance of shape in guiding visual search". Visual Cognition. 22 (3–4): 595–609. doi:10.1080/13506285.2014.890989. PMC 4500174. PMID 26180505.
  6. Utochkin, Igor S. (2015). "Ensemble summary statistics as a basis for rapid visual categorization". Journal of Vision. 15 (4): 8. doi:10.1167/15.4.8. PMID 26317396.
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