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The ''[[arithmetic mean]]'', also known as "arithmetic average", is the sum of the values divided by the number of values. The arithmetic mean of a set of numbers ''x''<sub>1</sub>, ''x''<sub>2</sub>, ..., x''<sub>n</sub>'' is typically denoted using an [[overhead bar]], <math>\bar{x}</math>.{{refn|Pronounced "''x'' bar".|group="note"}} If the numbers are from observing a [[sampling (statistics)|sample]] of a [[ statistical population |larger group]], the arithmetic mean is termed the ''[[sample mean]]'' (<math>\bar{x}</math>) to distinguish it from the [[ population mean |group mean]] (or [[expected value]]) of the underlying distribution, denoted '''<math>\mu</math>''' or '''<math>\mu_x</math>'''.{{refn|Greek letter [[Mu (letter)|μ]], pronounced /'mjuː/.|group="note"}}<ref>Underhill, L.G.; Bradfield d. (1998) ''Introstat'', Juta and Company Ltd. {{isbn|0-7021-3838-X}} [https://books.google.com/books?id=f6TlVjrSAsgC&pg=PA181 p. 181]</ref>
The ''[[arithmetic mean]]'', also known as "arithmetic average", is the sum of the values divided by the number of values. The arithmetic mean of a set of numbers ''x''<sub>1</sub>, ''x''<sub>2</sub>, ..., x''<sub>n</sub>'' is typically denoted using an [[overhead bar]], <math>\bar{x}</math>.{{refn|Pronounced "''x'' bar".|group="note"}} If the numbers are from observing a [[sampling (statistics)|sample]] of a [[ statistical population |larger group]], the arithmetic mean is termed the ''[[sample mean]]'' (<math>\bar{x}</math>) to distinguish it from the [[ population mean |group mean]] (or [[expected value]]) of the underlying distribution, denoted '''<math>\mu</math>''' or '''<math>\mu_x</math>'''.{{refn|Greek letter [[Mu (letter)|μ]], pronounced /'mjuː/.|group="note"}}<ref>Underhill, L.G.; Bradfield d. (1998) ''Introstat'', Juta and Company Ltd. {{isbn|0-7021-3838-X}} [https://books.google.com/books?id=f6TlVjrSAsgC&pg=PA181 p. 181]</ref>


Outside probability and statistics, a wide range of other notions of mean are often used in [[geometry]] and [[mathematical analysis]]; examples are given below.
Outside [[probability]] and statistics, a wide range of other notions of mean are often used in [[geometry]] and [[mathematical analysis]]; examples are given below.


==Types of means==
==Types of means==
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The [[arithmetic mean]] (or simply ''mean'' or ''average'') of a list of numbers, is the sum of all of the numbers divided by their count. Similarly, the mean of a sample <math>x_1,x_2,\ldots,x_n</math>, usually denoted by <math>\bar{x}</math>, is the sum of the sampled values divided by the number of items in the sample.
The [[arithmetic mean]] (or simply ''mean'' or ''average'') of a list of numbers, is the sum of all of the numbers divided by their count. Similarly, the mean of a sample <math>x_1,x_2,\ldots,x_n</math>, usually denoted by <math>\bar{x}</math>, is the sum of the sampled values divided by the number of items in the sample.


:<math> \bar{x} = \frac{1}{n}\left (\sum_{i=1}^n{x_i}\right ) = \frac{x_1+x_2+\cdots +x_n}{n} </math>
:<math> \bar{x} = \frac{1}{n}\sum_{i=1}^n{x_i} = \frac{x_1+x_2+\cdots +x_n}{n} </math>


For example, the arithmetic mean of five values: 4, 36, 45, 50, 75 is:
For example, the arithmetic mean of five values: 4, 36, 45, 50, 75 is:
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==== Geometric mean (GM) ====
==== Geometric mean (GM) ====
The [[geometric mean]] is an average that is useful for sets of positive numbers, that are interpreted according to their product (as is the case with rates of growth) and not their sum (as is the case with the arithmetic mean):
The [[geometric mean]] is an average that is useful for sets of positive numbers, that are interpreted according to their product (as is the case with rates of growth) and not their sum (as is the case with the arithmetic mean):<ref name=":2">{{Cite web|title=Mean {{!}} mathematics|url=https://www.britannica.com/science/mean|access-date=2020-08-21|website=Encyclopedia Britannica|language=en}}</ref>
:<math>\bar{x} = \left( \prod_{i=1}^n{x_i} \right )^\frac{1}{n} = \left(x_1 x_2 \cdots x_n \right)^\frac{1}{n}</math>  <ref name=":2">{{Cite web|title=Mean {{!}} mathematics|url=https://www.britannica.com/science/mean|access-date=2020-08-21|website=Encyclopedia Britannica|language=en}}</ref>
:<math>\bar{x} = \left( \prod_{i=1}^n{x_i} \right )^\frac{1}{n} = \left(x_1 x_2 \cdots x_n \right)^\frac{1}{n}</math>   


For example, the geometric mean of five values: 4, 36, 45, 50, 75 is:
For example, the geometric mean of five values: 4, 36, 45, 50, 75 is:
Line 42: Line 42:


If we have five pumps that can empty a tank of a certain size in respectively 4, 36, 45, 50, and 75 minutes, then the harmonic mean of <math>15</math>
If we have five pumps that can empty a tank of a certain size in respectively 4, 36, 45, 50, and 75 minutes, then the harmonic mean of <math>15</math>
tells us that these five different pumps working together will pump at the same rate as much as five pumps that can each empty the tank in <math>15</math> minutes.
tells us that these five different pumps working together will pump at the same rate as five pumps that can each empty the tank in <math>15</math> minutes.


==== Relationship between AM, GM, and HM ====
==== Relationship between AM, GM, and HM ====
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[[File:Comparison mean median mode.svg|thumb|Comparison of the [[arithmetic mean]], [[median]], and [[mode (statistics)|mode]] of two skewed ([[log-normal distribution|log-normal]]) distributions]]
[[File:Comparison mean median mode.svg|thumb|Comparison of the [[arithmetic mean]], [[median]], and [[mode (statistics)|mode]] of two skewed ([[log-normal distribution|log-normal]]) distributions]]
[[File:visualisation mode median mean.svg|thumb|upright|Geometric visualization of the mode, median and mean of an arbitrary probability density function<ref>{{cite web|title=AP Statistics Review - Density Curves and the Normal Distributions|url=http://apstatsreview.tumblr.com/post/50058615236/density-curves-and-the-normal-distributions?action=purge|access-date=16 March 2015|archive-url=https://web.archive.org/web/20150402183703/http://apstatsreview.tumblr.com/post/50058615236/density-curves-and-the-normal-distributions?action=purge|archive-date=2 April 2015|url-status=dead}}</ref>]]
[[File:visualisation mode median mean.svg|thumb|upright|Geometric visualization of the mode, median and mean of an arbitrary probability density function<ref>{{cite web|title=AP Statistics Review - Density Curves and the Normal Distributions|url=http://apstatsreview.tumblr.com/post/50058615236/density-curves-and-the-normal-distributions?action=purge|access-date=16 March 2015|archive-url=https://web.archive.org/web/20150402183703/http://apstatsreview.tumblr.com/post/50058615236/density-curves-and-the-normal-distributions?action=purge|archive-date=2 April 2015|url-status=dead}}</ref>]]
In [[descriptive statistics]], the mean may be confused with the [[median]], [[Mode (statistics)|mode]] or [[mid-range]], as any of these may incorrectly be called an "average" (more formally, a measure of [[central tendency]]). The mean of a set of observations is the arithmetic average of the values; however, for [[skewness|skewed distributions]], the mean is not necessarily the same as the middle value (median), or the most likely value (mode). For example, mean income is typically skewed upwards by a small number of people with very large incomes, so that the majority have an income lower than the mean. By contrast, the median income is the level at which half the population is below and half is above. The mode income is the most likely income and favors the larger number of people with lower incomes. While the median and mode are often more intuitive measures for such skewed data, many skewed distributions are in fact best described by their mean, including the [[Exponential distribution|exponential]] and [[Poisson distribution|Poisson]] distributions.
In [[descriptive statistics]], the mean may be confused with the [[median]], [[Mode (statistics)|mode]] or [[mid-range]], as any of these may colloquially be called an "average" (more formally, a measure of [[central tendency]]). The mean of a set of observations is the arithmetic average of the values; however, for [[skewness|skewed distributions]], the mean is not necessarily the same as the middle value (median), or the most likely value (mode). For example, mean income is typically skewed upwards by a small number of people with very large incomes, so that the majority have an income lower than the mean. By contrast, the median income is the level at which half the population is below and half is above. The mode income is the most likely income and favors the larger number of people with lower incomes. While the median and mode are often more intuitive measures for such skewed data, many skewed distributions are in fact best described by their mean, including the [[Exponential distribution|exponential]] and [[Poisson distribution|Poisson]] distributions.


====Mean of a probability distribution====
====Mean of a probability distribution====
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====Power mean====
====Power mean====
The [[generalized mean]], also known as the power mean or Hölder mean, is an abstraction of the [[quadratic mean|quadratic]], arithmetic, geometric, and harmonic means. It is defined for a set of ''n'' positive numbers ''x''<sub>i</sub> by
{{Main|Generalized mean}}
The generalized mean, also known as the power mean or Hölder mean, abstracts several other means. It is defined for positive numbers <math>x_1, \dots, x_n</math> by{{r|:2}}
:<math>M_p(x_1, \dots, x_n) = \left( \frac{1}{n} \sum_{i=1}^n x_i^p \right)^{1/p}.</math>
This, as a function of <math>p</math>, is well defined on <math>\mathbb{R}\setminus \{0\}</math>, but can be extended continuously to <math>\mathbb{R} \cup \{-\infty, +\infty\}</math>.<ref name="Bullen">P. S. Bullen: ''Handbook of Means and Their Inequalities''. Dordrecht, Netherlands: Kluwer, 2003, pp. 176.</ref>
By choosing different values for <math>m</math>, other well known means are retrieved.


<p style="margin-left:1.6em;">
{| class="wikitable"
<math>\bar{x}(m) = \left( \frac{1}{n} \sum_{i=1}^n x_i^m \right)^\frac{1}{m}</math> {{r|:2|style="position:absolute; right:0;"}}
|-
</p>
! Name
! Exponent
! Value
|-
| [[Minimum]]
| <math>p = -\infty</math>
| <math>\min \{x_1, \dots, x_n\}</math>
|-
| [[Harmonic mean]]
| <math>p = -1</math>
| <math>\frac{n}{\frac{1}{x_1}+\dots+\frac{1}{x_n}}</math>
|-
| [[Geometric mean]]
| <math>p = 0</math>
| <math>\sqrt[n]{x_1\dots x_n}</math>
|-
| [[Arithmetic mean]]
| <math>p = 1</math>
| <math>\frac{x_1 + \dots + x_n}{n}</math>
|-
| [[Root mean square]]
| <math>p = 2</math>
| <math>\sqrt{\frac{x_1^2 + \dots + x_n^2}{n}}</math>
|-
| [[Cubic mean]]
| <math>p = 3</math>
| <math>\sqrt[3]{\frac{x_1^3 + \dots + x_n^3}{n}}</math>
|-
| [[Maximum]]
| <math>p = +\infty</math>
| <math>\max\{x_1, \dots, x_n\}</math>
|}


By choosing different values for the parameter ''m'', the following types of means are obtained:
====Quasi-arithmetic mean====
 
{{Main|Quasi-arithmetic mean}}
{{glossary|style=display:grid;grid-template-columns: max-content auto;margin-left:1.6em;}}
A similar approach to the power mean is the <math>f</math>-mean, also known as the quasi-arithmetic mean.
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to \infty}</math>}}
For an [[injective]] function <math>f \colon I \rightarrow \mathbb{R}</math> on an interval <math>I \subset \mathbb{R}</math> and real numbers <math>x_1, \dots, x_n \in I</math> we define their <math>f</math>-mean as
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[maximum]] of <math>x_i</math>}}
: <math> M_f(x_1, \dots, x_n) = f^{-1}\left({\frac{1}{n} \sum_{i=1}^n{f\left(x_i\right)}}\right). </math>
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to 2}</math>}}
By choosing different functions <math>f</math>, other well known means are retrieved.
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[quadratic mean]]}}
{| class="wikitable"
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to 1}</math>}}
|-
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[arithmetic mean]]}}
! Mean
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to 0}</math>}}
! <math>I</math>
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[geometric mean]]}}
! Function{{refn|For this column we will use the "mapping arrow" to denote a function. Under this notation, the function <math>f</math> is denoted by <math>x \mapsto f(x)</math>.|group="note"}}
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to -1}</math>}}
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[harmonic mean]]}}
{{term|style=grid-column-start: 1;margin-top:auto;margin-bottom:auto;text-align:right;|term=<math>\lim_{m \to -\infty}</math>}}
{{defn|style=grid-column-start: 2;margin-top:auto;margin-bottom:auto;text-align:left;|defn=[[minimum]] of <math>x_i</math>}}
{{glossary end}}
 
==== ''f''-mean====
This can be generalized further as the [[generalized f-mean|generalized {{mvar|f}}-mean]]
: <math> \bar{x} = f^{-1}\left({\frac{1}{n} \sum_{i=1}^n{f\left(x_i\right)}}\right) </math>
 
and again a suitable choice of an invertible {{mvar|f}} will give
: {|
|-
|-
| <math>f(x) = x^m</math> || [[power mean]],
| [[Arithmetic mean]]
| <math>\mathbb{R}</math>
| <math>x \mapsto x</math>
|-
|-
| <math>f(x) = x</math> || [[arithmetic mean]],
| [[Geometric mean]]
| <math>]0, +\infty[</math>{{refn|The geometric mean is well defined on <math>[0, +\infty[</math>, but this is not captured by this approach.|group="note"}}
| <math>x \mapsto \ln(x)</math>
|-
|-
| <math>f(x) = \ln(x)</math> || [[geometric mean]].
| [[Harmonic mean]]
| <math>\mathbb{R} \setminus \{0\}</math>
| <math>x \mapsto x^{-1}</math>
|-
|-
| <math>f(x) = x^{-1} = \frac{1}{x}</math> || [[harmonic mean]],
| [[Power mean]]
| <math>\mathbb{R} \setminus \{0\}</math>{{refn|For <math>m \neq 0</math> the domain can be <math>\mathbb{R}</math>.|group="note"}}
| <math>x \mapsto x^m</math>
|}
|}


===Weighted arithmetic mean===
===Weighted arithmetic mean===
The [[weighted mean|weighted arithmetic mean]] (or weighted average) is used if one wants to combine average values from different sized samples of the same population:
The [[weighted mean|weighted arithmetic mean]] (or weighted average) is used if one wants to combine average values from different sized samples of the same population, and is define by<ref name=":2" />


:<math>\bar{x} = \frac{\sum_{i=1}^n {w_i \bar{x_i}}}{\sum_{i=1}^n w_i}. </math>  <ref name=":2" />
:<math>\bar{x} = \frac{\sum_{i=1}^n {w_i x_i}}{\sum_{i=1}^n w_i}, </math>  


Where <math>\bar{x_i}</math> and <math>w_i</math> are the mean and size of sample <math>i</math> respectively. In other applications, they represent a measure for the reliability of the influence upon the mean by the respective values.
where <math>x_i</math> and <math>w_i</math> are the mean and size of sample <math>i</math> respectively. In other applications, they represent a measure for the reliability of the influence upon the mean by the respective values.


===Truncated mean===
===Truncated mean===
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In some circumstances, mathematicians may calculate a mean of an infinite (or even an [[uncountable]]) set of values. This can happen when calculating the mean value <math>y_\text{avg}</math> of a function <math>f(x)</math>. Intuitively, a mean of a function can be thought of as calculating the area under a section of a curve, and then dividing by the length of that section. This can be done crudely by counting squares on graph paper, or more precisely by [[integral|integration]]. The integration formula is written as:
In some circumstances, mathematicians may calculate a mean of an infinite (or even an [[uncountable]]) set of values. This can happen when calculating the mean value <math>y_\text{avg}</math> of a function <math>f(x)</math>. Intuitively, a mean of a function can be thought of as calculating the area under a section of a curve, and then dividing by the length of that section. This can be done crudely by counting squares on graph paper, or more precisely by [[integral|integration]]. The integration formula is written as:


: <math>y_\text{avg}(a, b) = \frac{1}{b - a} \int\limits_a^b\! f(x)\,dx</math>
: <math>y_\text{avg}(a, b) = \frac{1}{b - a} \int_a^b f(x)\,dx.</math>


In this case, care must be taken to make sure that the integral converges. But the mean may be finite even if the function itself tends to infinity at some points.
In this case, care must be taken to make sure that the integral converges. But the mean may be finite even if the function itself tends to infinity at some points.

Latest revision as of 11:42, 29 September 2025

Template:Short description

Template:Hatnote group A mean is a quantity representing the "center" of a collection of numbers and is intermediate to the extreme values of the set of numbers.[1] There are several kinds of means (or "measures of central tendency") in mathematics, especially in statistics. Each attempts to summarize or typify a given group of data, illustrating the magnitude and sign of the data set. Which of these measures is most illuminating depends on what is being measured, and on context and purpose.[2]

The arithmetic mean, also known as "arithmetic average", is the sum of the values divided by the number of values. The arithmetic mean of a set of numbers x1, x2, ..., xn is typically denoted using an overhead bar, x¯.Template:Refn If the numbers are from observing a sample of a larger group, the arithmetic mean is termed the sample mean (x¯) to distinguish it from the group mean (or expected value) of the underlying distribution, denoted μ or μx.Template:Refn[3]

Outside probability and statistics, a wide range of other notions of mean are often used in geometry and mathematical analysis; examples are given below.

Types of means

Pythagorean means

Script error: No such module "Labelled list hatnote". In mathematics, the three classical Pythagorean means are the arithmetic mean (AM), the geometric mean (GM), and the harmonic mean (HM). These means were studied with proportions by Pythagoreans and later generations of Greek mathematicians[4] because of their importance in geometry and music.

Arithmetic mean (AM)

Script error: No such module "Labelled list hatnote". The arithmetic mean (or simply mean or average) of a list of numbers, is the sum of all of the numbers divided by their count. Similarly, the mean of a sample x1,x2,,xn, usually denoted by x¯, is the sum of the sampled values divided by the number of items in the sample.

x¯=1ni=1nxi=x1+x2++xnn

For example, the arithmetic mean of five values: 4, 36, 45, 50, 75 is:

4+36+45+50+755=2105=42.

Geometric mean (GM)

The geometric mean is an average that is useful for sets of positive numbers, that are interpreted according to their product (as is the case with rates of growth) and not their sum (as is the case with the arithmetic mean):[1]

x¯=(i=1nxi)1n=(x1x2xn)1n

For example, the geometric mean of five values: 4, 36, 45, 50, 75 is:

(4×36×45×50×75)15=243000005=30.

Harmonic mean (HM)

The harmonic mean is an average which is useful for sets of numbers which are defined in relation to some unit, as in the case of speed (i.e., distance per unit of time):

x¯=n(i=1n1xi)1

For example, the harmonic mean of the five values: 4, 36, 45, 50, 75 is

514+136+145+150+175=513=15.

If we have five pumps that can empty a tank of a certain size in respectively 4, 36, 45, 50, and 75 minutes, then the harmonic mean of 15 tells us that these five different pumps working together will pump at the same rate as five pumps that can each empty the tank in 15 minutes.

Relationship between AM, GM, and HM

Template:AM GM inequality visual proof.svg Script error: No such module "Labelled list hatnote".

AM, GM, and HM of nonnegative real numbers satisfy these inequalities:[5]

AMGMHM

Equality holds if all the elements of the given sample are equal.

Statistical location

Script error: No such module "Labelled list hatnote".

File:Comparison mean median mode.svg
Comparison of the arithmetic mean, median, and mode of two skewed (log-normal) distributions
File:Visualisation mode median mean.svg
Geometric visualization of the mode, median and mean of an arbitrary probability density function[6]

In descriptive statistics, the mean may be confused with the median, mode or mid-range, as any of these may colloquially be called an "average" (more formally, a measure of central tendency). The mean of a set of observations is the arithmetic average of the values; however, for skewed distributions, the mean is not necessarily the same as the middle value (median), or the most likely value (mode). For example, mean income is typically skewed upwards by a small number of people with very large incomes, so that the majority have an income lower than the mean. By contrast, the median income is the level at which half the population is below and half is above. The mode income is the most likely income and favors the larger number of people with lower incomes. While the median and mode are often more intuitive measures for such skewed data, many skewed distributions are in fact best described by their mean, including the exponential and Poisson distributions.

Mean of a probability distribution

Script error: No such module "Labelled list hatnote". Script error: No such module "Labelled list hatnote". The mean of a probability distribution is the long-run arithmetic average value of a random variable having that distribution. If the random variable is denoted by X, then the mean is also known as the expected value of X (denoted E(X)). For a discrete probability distribution, the mean is given by xP(x), where the sum is taken over all possible values of the random variable and P(x) is the probability mass function. For a continuous distribution, the mean is xf(x)dx, where f(x) is the probability density function.[7] In all cases, including those in which the distribution is neither discrete nor continuous, the mean is the Lebesgue integral of the random variable with respect to its probability measure. The mean need not exist or be finite; for some probability distributions the mean is infinite (Template:Math or Template:Math), while for others the mean is undefined.

Generalized means

Power mean

Script error: No such module "Labelled list hatnote". The generalized mean, also known as the power mean or Hölder mean, abstracts several other means. It is defined for positive numbers x1,,xn byTemplate:R

Mp(x1,,xn)=(1ni=1nxip)1/p.

This, as a function of p, is well defined on {0}, but can be extended continuously to {,+}.[8] By choosing different values for m, other well known means are retrieved.

Name Exponent Value
Minimum p= min{x1,,xn}
Harmonic mean p=1 n1x1++1xn
Geometric mean p=0 x1xnn
Arithmetic mean p=1 x1++xnn
Root mean square p=2 x12++xn2n
Cubic mean p=3 x13++xn3n3
Maximum p=+ max{x1,,xn}

Quasi-arithmetic mean

Script error: No such module "Labelled list hatnote". A similar approach to the power mean is the f-mean, also known as the quasi-arithmetic mean. For an injective function f:I on an interval I and real numbers x1,,xnI we define their f-mean as

Mf(x1,,xn)=f1(1ni=1nf(xi)).

By choosing different functions f, other well known means are retrieved.

Mean I FunctionTemplate:Refn
Arithmetic mean xx
Geometric mean ]0,+[Template:Refn xln(x)
Harmonic mean {0} xx1
Power mean {0}Template:Refn xxm

Weighted arithmetic mean

The weighted arithmetic mean (or weighted average) is used if one wants to combine average values from different sized samples of the same population, and is define by[1]

x¯=i=1nwixii=1nwi,

where xi and wi are the mean and size of sample i respectively. In other applications, they represent a measure for the reliability of the influence upon the mean by the respective values.

Truncated mean

Sometimes, a set of numbers might contain outliers (i.e., data values which are much lower or much higher than the others). Often, outliers are erroneous data caused by artifacts. 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 the total number of values.

Interquartile mean

The 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.

x¯=2ni=n4+134nxi

assuming the values have been ordered, so is simply a specific example of a weighted mean for a specific set of weights.

Mean of a function

Script error: No such module "Labelled list hatnote". In some circumstances, mathematicians may calculate a mean of an infinite (or even an uncountable) set of values. This can happen when calculating the mean value yavg of a function f(x). Intuitively, a mean of a function can be thought of as calculating the area under a section of a curve, and then dividing by the length of that section. This can be done crudely by counting squares on graph paper, or more precisely by integration. The integration formula is written as:

yavg(a,b)=1baabf(x)dx.

In this case, care must be taken to make sure that the integral converges. But the mean may be finite even if the function itself tends to infinity at some points.

Mean of angles and cyclical quantities

Angles, times of day, and other cyclical quantities require modular arithmetic to add and otherwise combine numbers. These quantities can be averaged using the circular mean. In all these situations, it is possible that no mean exists, for example if all points being averaged are equidistant. Consider a color wheel—there is no mean to the set of all colors. Additionally, there may not be a unique mean for a set of values: for example, when averaging points on a clock, the mean of the locations of 11:00 and 13:00 is 12:00, but this location is equivalent to that of 00:00.

Fréchet mean

The Fréchet mean gives a manner for determining the "center" of a mass distribution on a surface or, more generally, Riemannian manifold. Unlike many other means, the Fréchet mean is defined on a space whose elements cannot necessarily be added together or multiplied by scalars. It is sometimes also known as the Karcher mean (named after Hermann Karcher).

Triangular sets

In geometry, there are thousands of different definitions for the center of a triangle that can all be interpreted as the mean of a triangular set of points in the plane.[9]

Swanson's rule

This is an approximation to the mean for a moderately skewed distribution.[10] It is used in hydrocarbon exploration and is defined as:

m=0.3P10+0.4P50+0.3P90

where P10, P50 and P90 are the 10th, 50th and 90th percentiles of the distribution, respectively.

Other means

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See also

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Notes

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References

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  1. a b c Script error: No such module "citation/CS1".
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  3. Underhill, L.G.; Bradfield d. (1998) Introstat, Juta and Company Ltd. Template:Isbn p. 181
  4. Script error: No such module "citation/CS1".
  5. Script error: No such module "citation/CS1".
  6. Script error: No such module "citation/CS1".
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  8. P. S. Bullen: Handbook of Means and Their Inequalities. Dordrecht, Netherlands: Kluwer, 2003, pp. 176.
  9. Script error: No such module "Citation/CS1".
  10. Hurst A, Brown GC, Swanson RI (2000) Swanson's 30-40-30 Rule. American Association of Petroleum Geologists Bulletin 84(12) 1883-1891