In probability theory and statistics, a median is described as the numeric value separating the higher half of a sample, a population, or a probability distribution, from the lower half. The median of a finite list of numbers can be found by arranging all the observations from lowest value to highest value and picking the middle one. If there is an even number of observations, then there is no single middle value; the median is then usually defined to be the mean of the two middle values.
In a sample of data, or a finite population, there may be no member of the sample whose value is identical to the median (in the case of an even sample size), and, if there is such a member, there may be more than one so that the median may not uniquely identify a sample member. Nonetheless, the value of the median is uniquely determined with the usual definition. A related concept, in which the outcome is forced to correspond to a member of the sample, is the medoid.
At most, half the population have values less than the median, and, at most, half have values greater than the median. If both groups contain less than half the population, then some of the population is exactly equal to the median. For example, if a < b < c, then the median of the list {a, b, c} is b, and, if a < b < c < d, then the median of the list {a, b, c, d} is the mean of b and c; i.e., it is (b + c)/2.
The median can be used as a measure of location when a distribution is skewed, when end-values are not known, or when one requires reduced importance to be attached to outliers, e.g., because they may be measurement errors. A disadvantage of the median is the difficulty of handling it theoretically.
Notation
The median of some variable
x is denoted either as
or as
Measures of statistical dispersion
When the
median is used as a
location parameter in descriptive statistics, there are several choices for a measure of variability: the
range, the
interquartile range, the mean
absolute deviation, and the
median absolute deviation. Since the median is the same as the
second quartile, its calculation is illustrated in the article on
quartiles.
Medians of probability distributions
For any
probability distribution on the
real line with
cumulative distribution function F, regardless of whether it is any kind of continuous probability distribution, in particular an
absolutely continuous distribution (and therefore has a
probability density function), or a discrete probability distribution, a median
m satisfies the inequalities
:
or
:
in which a Lebesgue–Stieltjes integral is used. For an absolutely continuous probability distribution with probability density function ƒ, we have
:
Medians of particular distributions
The medians of certain types of distributions can be easily calculated from their parameters: The median of a
normal distribution with mean μ and variance σ
2 is μ. In fact, for a normal distribution, mean = median = mode. The median of a
uniform distribution in the interval [
a,
b] is (
a +
b) / 2, which is also the mean. The median of a
Cauchy distribution with location parameter
x0 and scale parameter
y is
x0, the location parameter. The median of an
exponential distribution with
rate parameter λ is the natural logarithm of 2 divided by the rate parameter:
λ−1ln 2. The median of a
Weibull distribution with shape parameter
k and scale parameter
λ is
λ(ln 2)
1/k.
Medians in descriptive statistics
The median is used primarily for
skewed distributions, which it summarizes differently than the
arithmetic mean. Consider the
multiset { 1, 2, 2, 2, 3, 14 }. The median is 2 in this case, as is the
mode, and it might be seen as a better indication of
central tendency than the
arithmetic mean of 4.
Calculation of medians is a popular technique in summary statistics and summarizing statistical data, since it is simple to understand and easy to calculate, while also giving a measure that is more robust in the presence of outlier values than is the mean.
Theoretical properties
An optimality property
A median is also a central point that minimizes the average of the absolute deviations. In the above example, the median value of 2 minimizes the average of the absolute deviations (1 + 0 + 0 + 0 + 1 + 12) / 6 = 2.33; in contrast, the mean value of 4 minimizes the average of the squares (9 + 4 + 4 + 4 + 1 + 100) / 6 = 20.33. In the language of statistics, a value of
c that minimizes
:
is a median of the probability distribution of the random variable X.
However, a median c need not be uniquely defined. Where exactly one median exists, statisticians speak of "the median" correctly; even when no unique median exists, some statisticians speak of "the median" informally.
See also k-medians clustering.
An inequality relating means and medians
For continuous probability distributions, the difference between the median and the mean is never more than one
standard deviation. See .
The sample median
Efficient computation of the sample median
Even though
sorting n items requires
O(
n log
n) operations,
selection algorithms can compute the
kth-smallest of n items (e.g., the median) with only
O(
n) operations.
Easy explanation of the sample median
For an odd number of values
As an example, we will calculate the sample median for the following set of observations: 1, 5, 2, 8, 7.
Start by sorting the values: 1, 2, 5, 7, 8.
In this case, the median is 5 since it is the middle observation in the ordered list.
The median is the ((n + 1)/2)th item, where n is the number of values. For example, for the list {1, 2, 5, 7, 8}, we have n = 5, so the median is the ((5 + 1)/2)th item.
: median = (6/2)th item
: median = 3rd item
: median = 5
For an even number of values
As an example, we will calculate the sample median for the following set of observations: 1, 5, 2, 8, 7, 2.
Start by sorting the values: 1, 2, 2, 5, 7, 8.
In this case, the average of the two middlemost terms is (2 + 5)/2 = 3.5. Therefore, the median is 3.5 since it is the average of the middle observations in the ordered list.
We also use this formula MEDIAN = {(n+1)/2} th item . n= Number of values
As above example 1,2,2,5,7,8
n=6 Median={(6+1)/2}th item =3.5 th item
3rd item is 2 Median = {2+(0.5*(difference of 3rd and 4th item)}
Median = {2+(0.5*(2-5)}
Median = {2+(0.5*3)}
Median = (2+1.5)
Median = 3.5
Other estimates of the median
If data are represented by a
statistical model specifying a particular family of
probability distributions, then estimates of the median can be obtained by fitting that family of probability distributions to the data and calculating the theoretical median of the fitted distribution. See, for example
Pareto interpolation.
Median-unbiased estimators, and bias with respect to loss functions
Any
mean-unbiased estimator minimizes the
risk (
expected loss) with respect to the squared-error
loss function, as observed by
Gauss. A
median-unbiased estimator minimizes the risk with respect to the
absolute-deviation loss function, as observed by
Laplace. Other
loss functions are used in
statistical theory, particularly in
robust statistics.
The theory of median-unbiased estimators was revived by George W. Brown in 1947:
An estimate of a one-dimensional parameter θ will be said to be median-unbiased, if, for fixed θ, the median of the distribution of the estimate is at the value θ; i.e., the estimate underestimates just as often as it overestimates. This requirement seems for most purposes to accomplish as much as the mean-unbiased requirement and has the additional property that it is invariant under one-to-one transformation. [page 584]
Further properties of median-unbiased estimators have been noted by Lehmann, Birnbaum, van der Vaart and Pfanzagl. In particular, median-unbiased estimators exist in cases where mean-unbiased and maximum-likelihood estimators do not exist. Besides being invariant under
one-to-one transformations, median-unbiased estimators have surprising
robustness.
In image processing
In
monochrome raster images there is a type of noise, known as the
salt and pepper noise, when each pixel independently become black (with some small probability) or white (with some small probability), and is unchanged otherwise (with the probability close to 1).
An image constructed of median values of neighborhoods (like 3×3 square) can effectively
reduce noise in this case.
In multidimensional statistical inference
In multidimensional statistical inference, the value
that minimizes
is also called a
centroid. In this case
is indicating a
norm for the vector difference, such as the
Euclidean norm, rather than the one-dimensional case's use of an absolute value. (Note that in some other contexts a
centroid is more like a multidimensional mean than the multidimensional median described here.)
Like a centroid, a medoid minimizes , but is restricted to be a member of specified set. For instance, the set could be a sample of points drawn from some distribution.
History
Gustav Fechner popularized the median into the formal analysis of data, although it had been used previously by Laplace.
See also
Order statistic
Quantile
A median is the 2nd quartile, 5th decile, and 50th percentile.
A sample-median is median-unbiased but can be a mean-biased estimator.
Absolute deviation
Concentration of measure for Lipschitz functions
*
Median voter theory
Median graph
The centerpoint is a generalization of the median for data in higher dimensions.
Median search
Hinges (statistics)
References
Brown, George W. ”On Small-Sample Estimation.” The Annals of Mathematical Statistics, Vol. 18, No. 4 (Dec., 1947), pp. 582–585.
Lehmann, E. L. “A General Concept of Unbiasedness” The Annals of Mathematical Statistics, Vol. 22, No. 4 (Dec., 1951), pp. 587–592.
Allan Birnbaum. 1961. “A Unified Theory of Estimation, I”, The Annals of Mathematical Statistics, Vol. 32, No. 1 (Mar., 1961), pp. 112–135
van der Vaart, H. R. 1961. “Some Extensions of the Idea of Bias” The Annals of Mathematical Statistics, Vol. 32, No. 2 (Jun., 1961), pp. 436–447.
External links
A Guide to Understanding & Calculating the Median
Median as a weighted arithmetic mean of all Sample Observations
On-line calculator
Calculating the median
A problem involving the mean, the median, and the mode.
mathworld: Statistical Median
Python script for Median computations and income inequality metrics
Category:Means
Category:Robust statistics