| :mod:`statistics` --- Mathematical statistics functions |
| ======================================================= |
| |
| .. module:: statistics |
| :synopsis: mathematical statistics functions |
| |
| .. moduleauthor:: Steven D'Aprano <steve+python@pearwood.info> |
| .. sectionauthor:: Steven D'Aprano <steve+python@pearwood.info> |
| |
| .. versionadded:: 3.4 |
| |
| **Source code:** :source:`Lib/statistics.py` |
| |
| .. testsetup:: * |
| |
| from statistics import * |
| __name__ = '<doctest>' |
| |
| -------------- |
| |
| This module provides functions for calculating mathematical statistics of |
| numeric (:class:`Real`-valued) data. |
| |
| .. note:: |
| |
| Unless explicitly noted otherwise, these functions support :class:`int`, |
| :class:`float`, :class:`decimal.Decimal` and :class:`fractions.Fraction`. |
| Behaviour with other types (whether in the numeric tower or not) is |
| currently unsupported. Mixed types are also undefined and |
| implementation-dependent. If your input data consists of mixed types, |
| you may be able to use :func:`map` to ensure a consistent result, e.g. |
| ``map(float, input_data)``. |
| |
| Averages and measures of central location |
| ----------------------------------------- |
| |
| These functions calculate an average or typical value from a population |
| or sample. |
| |
| ======================= ============================================= |
| :func:`mean` Arithmetic mean ("average") of data. |
| :func:`median` Median (middle value) of data. |
| :func:`median_low` Low median of data. |
| :func:`median_high` High median of data. |
| :func:`median_grouped` Median, or 50th percentile, of grouped data. |
| :func:`mode` Mode (most common value) of discrete data. |
| ======================= ============================================= |
| |
| Measures of spread |
| ------------------ |
| |
| These functions calculate a measure of how much the population or sample |
| tends to deviate from the typical or average values. |
| |
| ======================= ============================================= |
| :func:`pstdev` Population standard deviation of data. |
| :func:`pvariance` Population variance of data. |
| :func:`stdev` Sample standard deviation of data. |
| :func:`variance` Sample variance of data. |
| ======================= ============================================= |
| |
| |
| Function details |
| ---------------- |
| |
| Note: The functions do not require the data given to them to be sorted. |
| However, for reading convenience, most of the examples show sorted sequences. |
| |
| .. function:: mean(data) |
| |
| Return the sample arithmetic mean of *data*, a sequence or iterator of |
| real-valued numbers. |
| |
| The arithmetic mean is the sum of the data divided by the number of data |
| points. It is commonly called "the average", although it is only one of many |
| different mathematical averages. It is a measure of the central location of |
| the data. |
| |
| If *data* is empty, :exc:`StatisticsError` will be raised. |
| |
| Some examples of use: |
| |
| .. doctest:: |
| |
| >>> mean([1, 2, 3, 4, 4]) |
| 2.8 |
| >>> mean([-1.0, 2.5, 3.25, 5.75]) |
| 2.625 |
| |
| >>> from fractions import Fraction as F |
| >>> mean([F(3, 7), F(1, 21), F(5, 3), F(1, 3)]) |
| Fraction(13, 21) |
| |
| >>> from decimal import Decimal as D |
| >>> mean([D("0.5"), D("0.75"), D("0.625"), D("0.375")]) |
| Decimal('0.5625') |
| |
| .. note:: |
| |
| The mean is strongly affected by outliers and is not a robust estimator |
| for central location: the mean is not necessarily a typical example of the |
| data points. For more robust, although less efficient, measures of |
| central location, see :func:`median` and :func:`mode`. (In this case, |
| "efficient" refers to statistical efficiency rather than computational |
| efficiency.) |
| |
| The sample mean gives an unbiased estimate of the true population mean, |
| which means that, taken on average over all the possible samples, |
| ``mean(sample)`` converges on the true mean of the entire population. If |
| *data* represents the entire population rather than a sample, then |
| ``mean(data)`` is equivalent to calculating the true population mean μ. |
| |
| |
| .. function:: median(data) |
| |
| Return the median (middle value) of numeric data, using the common "mean of |
| middle two" method. If *data* is empty, :exc:`StatisticsError` is raised. |
| |
| The median is a robust measure of central location, and is less affected by |
| the presence of outliers in your data. When the number of data points is |
| odd, the middle data point is returned: |
| |
| .. doctest:: |
| |
| >>> median([1, 3, 5]) |
| 3 |
| |
| When the number of data points is even, the median is interpolated by taking |
| the average of the two middle values: |
| |
| .. doctest:: |
| |
| >>> median([1, 3, 5, 7]) |
| 4.0 |
| |
| This is suited for when your data is discrete, and you don't mind that the |
| median may not be an actual data point. |
| |
| .. seealso:: :func:`median_low`, :func:`median_high`, :func:`median_grouped` |
| |
| |
| .. function:: median_low(data) |
| |
| Return the low median of numeric data. If *data* is empty, |
| :exc:`StatisticsError` is raised. |
| |
| The low median is always a member of the data set. When the number of data |
| points is odd, the middle value is returned. When it is even, the smaller of |
| the two middle values is returned. |
| |
| .. doctest:: |
| |
| >>> median_low([1, 3, 5]) |
| 3 |
| >>> median_low([1, 3, 5, 7]) |
| 3 |
| |
| Use the low median when your data are discrete and you prefer the median to |
| be an actual data point rather than interpolated. |
| |
| |
| .. function:: median_high(data) |
| |
| Return the high median of data. If *data* is empty, :exc:`StatisticsError` |
| is raised. |
| |
| The high median is always a member of the data set. When the number of data |
| points is odd, the middle value is returned. When it is even, the larger of |
| the two middle values is returned. |
| |
| .. doctest:: |
| |
| >>> median_high([1, 3, 5]) |
| 3 |
| >>> median_high([1, 3, 5, 7]) |
| 5 |
| |
| Use the high median when your data are discrete and you prefer the median to |
| be an actual data point rather than interpolated. |
| |
| |
| .. function:: median_grouped(data, interval=1) |
| |
| Return the median of grouped continuous data, calculated as the 50th |
| percentile, using interpolation. If *data* is empty, :exc:`StatisticsError` |
| is raised. |
| |
| .. doctest:: |
| |
| >>> median_grouped([52, 52, 53, 54]) |
| 52.5 |
| |
| In the following example, the data are rounded, so that each value represents |
| the midpoint of data classes, e.g. 1 is the midpoint of the class 0.5--1.5, 2 |
| is the midpoint of 1.5--2.5, 3 is the midpoint of 2.5--3.5, etc. With the data |
| given, the middle value falls somewhere in the class 3.5--4.5, and |
| interpolation is used to estimate it: |
| |
| .. doctest:: |
| |
| >>> median_grouped([1, 2, 2, 3, 4, 4, 4, 4, 4, 5]) |
| 3.7 |
| |
| Optional argument *interval* represents the class interval, and defaults |
| to 1. Changing the class interval naturally will change the interpolation: |
| |
| .. doctest:: |
| |
| >>> median_grouped([1, 3, 3, 5, 7], interval=1) |
| 3.25 |
| >>> median_grouped([1, 3, 3, 5, 7], interval=2) |
| 3.5 |
| |
| This function does not check whether the data points are at least |
| *interval* apart. |
| |
| .. impl-detail:: |
| |
| Under some circumstances, :func:`median_grouped` may coerce data points to |
| floats. This behaviour is likely to change in the future. |
| |
| .. seealso:: |
| |
| * "Statistics for the Behavioral Sciences", Frederick J Gravetter and |
| Larry B Wallnau (8th Edition). |
| |
| * Calculating the `median <https://www.ualberta.ca/~opscan/median.html>`_. |
| |
| * The `SSMEDIAN |
| <https://help.gnome.org/users/gnumeric/stable/gnumeric.html#gnumeric-function-SSMEDIAN>`_ |
| function in the Gnome Gnumeric spreadsheet, including `this discussion |
| <https://mail.gnome.org/archives/gnumeric-list/2011-April/msg00018.html>`_. |
| |
| |
| .. function:: mode(data) |
| |
| Return the most common data point from discrete or nominal *data*. The mode |
| (when it exists) is the most typical value, and is a robust measure of |
| central location. |
| |
| If *data* is empty, or if there is not exactly one most common value, |
| :exc:`StatisticsError` is raised. |
| |
| ``mode`` assumes discrete data, and returns a single value. This is the |
| standard treatment of the mode as commonly taught in schools: |
| |
| .. doctest:: |
| |
| >>> mode([1, 1, 2, 3, 3, 3, 3, 4]) |
| 3 |
| |
| The mode is unique in that it is the only statistic which also applies |
| to nominal (non-numeric) data: |
| |
| .. doctest:: |
| |
| >>> mode(["red", "blue", "blue", "red", "green", "red", "red"]) |
| 'red' |
| |
| |
| .. function:: pstdev(data, mu=None) |
| |
| Return the population standard deviation (the square root of the population |
| variance). See :func:`pvariance` for arguments and other details. |
| |
| .. doctest:: |
| |
| >>> pstdev([1.5, 2.5, 2.5, 2.75, 3.25, 4.75]) |
| 0.986893273527251 |
| |
| |
| .. function:: pvariance(data, mu=None) |
| |
| Return the population variance of *data*, a non-empty iterable of real-valued |
| numbers. Variance, or second moment about the mean, is a measure of the |
| variability (spread or dispersion) of data. A large variance indicates that |
| the data is spread out; a small variance indicates it is clustered closely |
| around the mean. |
| |
| If the optional second argument *mu* is given, it should be the mean of |
| *data*. If it is missing or ``None`` (the default), the mean is |
| automatically calculated. |
| |
| Use this function to calculate the variance from the entire population. To |
| estimate the variance from a sample, the :func:`variance` function is usually |
| a better choice. |
| |
| Raises :exc:`StatisticsError` if *data* is empty. |
| |
| Examples: |
| |
| .. doctest:: |
| |
| >>> data = [0.0, 0.25, 0.25, 1.25, 1.5, 1.75, 2.75, 3.25] |
| >>> pvariance(data) |
| 1.25 |
| |
| If you have already calculated the mean of your data, you can pass it as the |
| optional second argument *mu* to avoid recalculation: |
| |
| .. doctest:: |
| |
| >>> mu = mean(data) |
| >>> pvariance(data, mu) |
| 1.25 |
| |
| This function does not attempt to verify that you have passed the actual mean |
| as *mu*. Using arbitrary values for *mu* may lead to invalid or impossible |
| results. |
| |
| Decimals and Fractions are supported: |
| |
| .. doctest:: |
| |
| >>> from decimal import Decimal as D |
| >>> pvariance([D("27.5"), D("30.25"), D("30.25"), D("34.5"), D("41.75")]) |
| Decimal('24.815') |
| |
| >>> from fractions import Fraction as F |
| >>> pvariance([F(1, 4), F(5, 4), F(1, 2)]) |
| Fraction(13, 72) |
| |
| .. note:: |
| |
| When called with the entire population, this gives the population variance |
| σ². When called on a sample instead, this is the biased sample variance |
| s², also known as variance with N degrees of freedom. |
| |
| If you somehow know the true population mean μ, you may use this function |
| to calculate the variance of a sample, giving the known population mean as |
| the second argument. Provided the data points are representative |
| (e.g. independent and identically distributed), the result will be an |
| unbiased estimate of the population variance. |
| |
| |
| .. function:: stdev(data, xbar=None) |
| |
| Return the sample standard deviation (the square root of the sample |
| variance). See :func:`variance` for arguments and other details. |
| |
| .. doctest:: |
| |
| >>> stdev([1.5, 2.5, 2.5, 2.75, 3.25, 4.75]) |
| 1.0810874155219827 |
| |
| |
| .. function:: variance(data, xbar=None) |
| |
| Return the sample variance of *data*, an iterable of at least two real-valued |
| numbers. Variance, or second moment about the mean, is a measure of the |
| variability (spread or dispersion) of data. A large variance indicates that |
| the data is spread out; a small variance indicates it is clustered closely |
| around the mean. |
| |
| If the optional second argument *xbar* is given, it should be the mean of |
| *data*. If it is missing or ``None`` (the default), the mean is |
| automatically calculated. |
| |
| Use this function when your data is a sample from a population. To calculate |
| the variance from the entire population, see :func:`pvariance`. |
| |
| Raises :exc:`StatisticsError` if *data* has fewer than two values. |
| |
| Examples: |
| |
| .. doctest:: |
| |
| >>> data = [2.75, 1.75, 1.25, 0.25, 0.5, 1.25, 3.5] |
| >>> variance(data) |
| 1.3720238095238095 |
| |
| If you have already calculated the mean of your data, you can pass it as the |
| optional second argument *xbar* to avoid recalculation: |
| |
| .. doctest:: |
| |
| >>> m = mean(data) |
| >>> variance(data, m) |
| 1.3720238095238095 |
| |
| This function does not attempt to verify that you have passed the actual mean |
| as *xbar*. Using arbitrary values for *xbar* can lead to invalid or |
| impossible results. |
| |
| Decimal and Fraction values are supported: |
| |
| .. doctest:: |
| |
| >>> from decimal import Decimal as D |
| >>> variance([D("27.5"), D("30.25"), D("30.25"), D("34.5"), D("41.75")]) |
| Decimal('31.01875') |
| |
| >>> from fractions import Fraction as F |
| >>> variance([F(1, 6), F(1, 2), F(5, 3)]) |
| Fraction(67, 108) |
| |
| .. note:: |
| |
| This is the sample variance s² with Bessel's correction, also known as |
| variance with N-1 degrees of freedom. Provided that the data points are |
| representative (e.g. independent and identically distributed), the result |
| should be an unbiased estimate of the true population variance. |
| |
| If you somehow know the actual population mean μ you should pass it to the |
| :func:`pvariance` function as the *mu* parameter to get the variance of a |
| sample. |
| |
| Exceptions |
| ---------- |
| |
| A single exception is defined: |
| |
| .. exception:: StatisticsError |
| |
| Subclass of :exc:`ValueError` for statistics-related exceptions. |
| |
| .. |
| # This modelines must appear within the last ten lines of the file. |
| kate: indent-width 3; remove-trailing-space on; replace-tabs on; encoding utf-8; |