Mean
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Categories: Articles needing additional references from February 2008 | Means | Mathematics education
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This article is about mathematical mean. For a definition of the word "mean", see the Wiktionary entry mean.
In statistics, mean has two related meanings:
It is sometimes stated that the 'mean' means average. This is incorrect if "mean" is taken in the specific sense of "arithmetic mean" as there are different types of averages: the mean, median, and mode. For instance, average house prices almost always use the median value for the average. For a real-valued random variable X, the mean is the expectation of X. Note that not every probability distribution has a defined mean (or variance); see the Cauchy distribution for an example. For a data set, the mean is the sum of the observations divided by the number of observations. The mean is often quoted along with the standard deviation: the mean describes the central location of the data, and the standard deviation describes the spread. An alternative measure of dispersion is the mean deviation, equivalent to the average absolute deviation from the mean. It is less sensitive to outliers, but less mathematically tractable. As well as statistics, means are often used in geometry and analysis; a wide range of means have been developed for these purposes, which are not much used in statistics. These are listed below.
Examples of meansArithmetic meanThe arithmetic mean is the "standard" average, often simply called the "mean".
That said, many skewed distributions are best described by their mean - such as the Exponential and Poisson distributions. For example, the arithmetic mean of 34, 27, 45, 55, 22, 34 (six values) is (34+27+45+55+22+34)/6 = 217/6 ≈ 36.167. Geometric meanThe geometric mean is an average that is useful for sets of numbers that are interpreted according to their product and not their sum (as is the case with the arithmetic mean). For example rates of growth.
Harmonic meanThe harmonic mean is an average which is useful for sets of numbers which are defined in relation to some unit, for example speed (distance per unit of time).
Generalized meansPower meanThe generalized mean, also known as the power mean or Hölder mean, is an abstraction of the quadratic, arithmetic, geometric and harmonic means. It is defined by
f-meanThis can be generalized further as the generalized f-mean
will give
Weighted arithmetic meanThe weighted arithmetic mean is used, if one wants to combine average values from samples of the same population with different sample sizes:
represent the bounds of the partial sample. In other applications they represent a measure for the reliability of the influence upon the mean by respective values. Truncated meanSometimes a set of numbers (the data) might be contaminated by inaccurate outliers, i.e. values which are much too low or much too high. In this case one can use a truncated mean. It involves discarding given parts of the data at the top or the bottom end, typically an equal amount at each end, and then taking the arithmetic mean of the remaining data. The number of values removed is indicated as a percentage of total number of values. Interquartile meanThe interquartile mean is a specific example of a truncated mean. It is simply the arithmetic mean after removing the lowest and the highest quarter of values.
assuming the values have been ordered. Mean of a functionIn calculus, and especially multivariable calculus, the mean of a function is loosely defined as the average value of the function over its domain. In one variable, the mean of a function f(x) over the interval (a,b) is defined by
Mean of anglesMost of the usual means fail on circular quantities, like angles, daytimes, fractional parts of real numbers. For those quantities you need a mean of circular quantities. Other means
PropertiesThe most general method for defining a mean or average, y, takes any function of a list g(x_1, x_2, ..., x_n), which is symmetric under permutation of the members of the list, and equates it to the same function with the value of the mean replacing each member of the list: g(x_1, x_2, ..., x_n) = g(y, y, ..., y). All means share some properties and additional properties are shared by the most common means. Some of these properties are collected here. Weighted meanA weighted mean Failed to parse (Missing texvc executable; please see math/README to configure.): M is a function which maps tuples of positive numbers to a positive number (Failed to parse (Missing texvc executable; please see math/README to configure.): \mathbb{R}_{>0}^n\to\mathbb{R}_{>0} ).
)
and Failed to parse (Missing texvc executable; please see math/README to configure.): M((1+\varepsilon)\cdot x) = (1+\varepsilon)\cdot M x it follows Failed to parse (Missing texvc executable; please see math/README to configure.): \forall x\ \forall \varepsilon>0\ \forall y\ ||x-y||_\infty\le\varepsilon\cdot\min x \Rightarrow |Mx-My|\le\varepsilon .
is bijective, then the generalized f-mean satisfies the fixed point property.
is strictly monotonic, then the generalized f-mean satisfy also the monotony property.
The above properties imply techniques to construct more complex means: If Failed to parse (Missing texvc executable; please see math/README to configure.): C, M_1, \dots, M_m are weighted means, Failed to parse (Missing texvc executable; please see math/README to configure.): p is a positive real number, then Failed to parse (Missing texvc executable; please see math/README to configure.): A, B with
are also a weighted mean. Unweighted meanIntuitively spoken, an unweighted mean is a weighted mean with equal weights. Since our definition of weighted mean above does not expose particular weights, equal weights must be asserted by a different way. A different view on homogeneous weighting is, that the inputs can be swapped without altering the result. Thus we define Failed to parse (Missing texvc executable; please see math/README to configure.): M being an unweighted mean if it is a weighted mean and for each permutation Failed to parse (Missing texvc executable; please see math/README to configure.): \pi of inputs, the result is the same. Let Failed to parse (Missing texvc executable; please see math/README to configure.): P be the set of permutations of Failed to parse (Missing texvc executable; please see math/README to configure.): n -tuples.
is a weighted mean and Failed to parse (Missing texvc executable; please see math/README to configure.): M_1, \dots, M_m are unweighted means, Failed to parse (Missing texvc executable; please see math/README to configure.): p is a positive real number, then Failed to parse (Missing texvc executable; please see math/README to configure.): A, B with
are also unweighted means. Convert unweighted mean to weighted meanAn unweighted mean can be turned into a weighted mean by repeating elements. This connection can also be used to state that a mean is the weighted version of an unweighted mean. Say you have the unweighted mean Failed to parse (Missing texvc executable; please see math/README to configure.): M and weight the numbers by natural numbers Failed to parse (Missing texvc executable; please see math/README to configure.): a_1,\dots,a_n . (If the numbers are rational, then multiply them with the least common denominator.) Then the corresponding weighted mean Failed to parse (Missing texvc executable; please see math/README to configure.): A is obtained by
. Means of tuples of different sizesIf a mean Failed to parse (Missing texvc executable; please see math/README to configure.): M is defined for tuples of several sizes, then one also expects that the mean of a tuple is bounded by the means of partitions. More precisely
, which is partitioned into Failed to parse (Missing texvc executable; please see math/README to configure.): y_1, \dots, y_k , then it holds Failed to parse (Missing texvc executable; please see math/README to configure.): M x \in \mathrm{convexhull}(M y_1, \dots, M y_k) . (See Convex hull) Population and sample meansThe mean of a normal distribution population has an expected value of μ, known as the population mean. The sample mean makes a good estimator of the population mean, as its expected value is the same as the population mean. The sample mean of a population is a random variable, not a constant, and consequently it will have its own distribution. For a random sample of n observations from a normally distributed population, the sample mean distribution is
Mathematics education
In many state and government curriculum standards, students are traditionally expected to learn either the meaning or formula for computing the mean by the fourth grade. However, in many standards-based mathematics curricula, students are encouraged to invent their own methods, and may not be taught the traditional method. Reform based texts such as TERC in fact discourage teaching the traditional "add the numbers and divide by the number of items" method in favor of spending more time on the concept of median, which does not require division. However, mean can be computed with a simple four-function calculator, while median requires a computer. The same teacher guide devotes several pages on how to find the median of a set, which is judged to be simpler than finding the mean. See also
External links
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