| :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:`~numbers.Real`-valued) data. | 
 |  | 
 | The module is not intended to be a competitor to third-party libraries such | 
 | as `NumPy <https://numpy.org>`_, `SciPy <https://www.scipy.org/>`_, or | 
 | proprietary full-featured statistics packages aimed at professional | 
 | statisticians such as Minitab, SAS and Matlab. It is aimed at the level of | 
 | graphing and scientific calculators. | 
 |  | 
 | Unless explicitly noted, 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.  Collections with a mix of 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, for | 
 | example: ``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:`fmean`            Fast, floating point arithmetic mean, with optional weighting. | 
 | :func:`geometric_mean`   Geometric mean of data. | 
 | :func:`harmonic_mean`    Harmonic mean 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`             Single mode (most common value) of discrete or nominal data. | 
 | :func:`multimode`        List of modes (most common values) of discrete or nominal data. | 
 | :func:`quantiles`        Divide data into intervals with equal probability. | 
 | =======================  =============================================================== | 
 |  | 
 | 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. | 
 | =======================  ============================================= | 
 |  | 
 | Statistics for relations between two inputs | 
 | ------------------------------------------- | 
 |  | 
 | These functions calculate statistics regarding relations between two inputs. | 
 |  | 
 | =========================  ===================================================== | 
 | :func:`covariance`         Sample covariance for two variables. | 
 | :func:`correlation`        Pearson's correlation coefficient for two variables. | 
 | :func:`linear_regression`  Slope and intercept for simple linear regression. | 
 | =========================  ===================================================== | 
 |  | 
 |  | 
 | 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* which can be a sequence or iterable. | 
 |  | 
 |    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 | 
 |       <https://en.wikipedia.org/wiki/Outlier>`_ and is not necessarily a | 
 |       typical example of the data points. For a more robust, although less | 
 |       efficient, measure of `central tendency | 
 |       <https://en.wikipedia.org/wiki/Central_tendency>`_, see :func:`median`. | 
 |  | 
 |       The sample mean gives an unbiased estimate of the true population mean, | 
 |       so that when 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:: fmean(data, weights=None) | 
 |  | 
 |    Convert *data* to floats and compute the arithmetic mean. | 
 |  | 
 |    This runs faster than the :func:`mean` function and it always returns a | 
 |    :class:`float`.  The *data* may be a sequence or iterable.  If the input | 
 |    dataset is empty, raises a :exc:`StatisticsError`. | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> fmean([3.5, 4.0, 5.25]) | 
 |       4.25 | 
 |  | 
 |    Optional weighting is supported.  For example, a professor assigns a | 
 |    grade for a course by weighting quizzes at 20%, homework at 20%, a | 
 |    midterm exam at 30%, and a final exam at 30%: | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> grades = [85, 92, 83, 91] | 
 |       >>> weights = [0.20, 0.20, 0.30, 0.30] | 
 |       >>> fmean(grades, weights) | 
 |       87.6 | 
 |  | 
 |    If *weights* is supplied, it must be the same length as the *data* or | 
 |    a :exc:`ValueError` will be raised. | 
 |  | 
 |    .. versionadded:: 3.8 | 
 |  | 
 |    .. versionchanged:: 3.11 | 
 |       Added support for *weights*. | 
 |  | 
 |  | 
 | .. function:: geometric_mean(data) | 
 |  | 
 |    Convert *data* to floats and compute the geometric mean. | 
 |  | 
 |    The geometric mean indicates the central tendency or typical value of the | 
 |    *data* using the product of the values (as opposed to the arithmetic mean | 
 |    which uses their sum). | 
 |  | 
 |    Raises a :exc:`StatisticsError` if the input dataset is empty, | 
 |    if it contains a zero, or if it contains a negative value. | 
 |    The *data* may be a sequence or iterable. | 
 |  | 
 |    No special efforts are made to achieve exact results. | 
 |    (However, this may change in the future.) | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> round(geometric_mean([54, 24, 36]), 1) | 
 |       36.0 | 
 |  | 
 |    .. versionadded:: 3.8 | 
 |  | 
 |  | 
 | .. function:: harmonic_mean(data, weights=None) | 
 |  | 
 |    Return the harmonic mean of *data*, a sequence or iterable of | 
 |    real-valued numbers.  If *weights* is omitted or *None*, then | 
 |    equal weighting is assumed. | 
 |  | 
 |    The harmonic mean is the reciprocal of the arithmetic :func:`mean` of the | 
 |    reciprocals of the data. For example, the harmonic mean of three values *a*, | 
 |    *b* and *c* will be equivalent to ``3/(1/a + 1/b + 1/c)``.  If one of the | 
 |    values is zero, the result will be zero. | 
 |  | 
 |    The harmonic mean is a type of average, a measure of the central | 
 |    location of the data.  It is often appropriate when averaging | 
 |    ratios or rates, for example speeds. | 
 |  | 
 |    Suppose a car travels 10 km at 40 km/hr, then another 10 km at 60 km/hr. | 
 |    What is the average speed? | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> harmonic_mean([40, 60]) | 
 |       48.0 | 
 |  | 
 |    Suppose a car travels 40 km/hr for 5 km, and when traffic clears, | 
 |    speeds-up to 60 km/hr for the remaining 30 km of the journey. What | 
 |    is the average speed? | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> harmonic_mean([40, 60], weights=[5, 30]) | 
 |       56.0 | 
 |  | 
 |    :exc:`StatisticsError` is raised if *data* is empty, any element | 
 |    is less than zero, or if the weighted sum isn't positive. | 
 |  | 
 |    The current algorithm has an early-out when it encounters a zero | 
 |    in the input.  This means that the subsequent inputs are not tested | 
 |    for validity.  (This behavior may change in the future.) | 
 |  | 
 |    .. versionadded:: 3.6 | 
 |  | 
 |    .. versionchanged:: 3.10 | 
 |       Added support for *weights*. | 
 |  | 
 | .. 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. | 
 |    *data* can be a sequence or iterable. | 
 |  | 
 |    The median is a robust measure of central location and is less affected by | 
 |    the presence of outliers.  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. | 
 |  | 
 |    If the data is ordinal (supports order operations) but not numeric (doesn't | 
 |    support addition), consider using :func:`median_low` or :func:`median_high` | 
 |    instead. | 
 |  | 
 | .. function:: median_low(data) | 
 |  | 
 |    Return the low median of numeric data.  If *data* is empty, | 
 |    :exc:`StatisticsError` is raised.  *data* can be a sequence or iterable. | 
 |  | 
 |    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.  *data* can be a sequence or iterable. | 
 |  | 
 |    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.  *data* can be a sequence or iterable. | 
 |  | 
 |    .. 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). | 
 |  | 
 |       * 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 single most common data point from discrete or nominal *data*. | 
 |    The mode (when it exists) is the most typical value and serves as a | 
 |    measure of central location. | 
 |  | 
 |    If there are multiple modes with the same frequency, returns the first one | 
 |    encountered in the *data*.  If the smallest or largest of those is | 
 |    desired instead, use ``min(multimode(data))`` or ``max(multimode(data))``. | 
 |    If the input *data* is empty, :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 in this package that | 
 |    also applies to nominal (non-numeric) data: | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> mode(["red", "blue", "blue", "red", "green", "red", "red"]) | 
 |       'red' | 
 |  | 
 |    .. versionchanged:: 3.8 | 
 |       Now handles multimodal datasets by returning the first mode encountered. | 
 |       Formerly, it raised :exc:`StatisticsError` when more than one mode was | 
 |       found. | 
 |  | 
 |  | 
 | .. function:: multimode(data) | 
 |  | 
 |    Return a list of the most frequently occurring values in the order they | 
 |    were first encountered in the *data*.  Will return more than one result if | 
 |    there are multiple modes or an empty list if the *data* is empty: | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |         >>> multimode('aabbbbccddddeeffffgg') | 
 |         ['b', 'd', 'f'] | 
 |         >>> multimode('') | 
 |         [] | 
 |  | 
 |    .. versionadded:: 3.8 | 
 |  | 
 |  | 
 | .. 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 sequence or 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 is typically the mean of | 
 |    the *data*.  It can also be used to compute the second moment around a | 
 |    point that is not the mean.  If it is missing or ``None`` (the default), | 
 |    the arithmetic 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 | 
 |  | 
 |    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 a | 
 |       random sample of the population, 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. | 
 |  | 
 | .. function:: quantiles(data, *, n=4, method='exclusive') | 
 |  | 
 |    Divide *data* into *n* continuous intervals with equal probability. | 
 |    Returns a list of ``n - 1`` cut points separating the intervals. | 
 |  | 
 |    Set *n* to 4 for quartiles (the default).  Set *n* to 10 for deciles.  Set | 
 |    *n* to 100 for percentiles which gives the 99 cuts points that separate | 
 |    *data* into 100 equal sized groups.  Raises :exc:`StatisticsError` if *n* | 
 |    is not least 1. | 
 |  | 
 |    The *data* can be any iterable containing sample data.  For meaningful | 
 |    results, the number of data points in *data* should be larger than *n*. | 
 |    Raises :exc:`StatisticsError` if there are not at least two data points. | 
 |  | 
 |    The cut points are linearly interpolated from the | 
 |    two nearest data points.  For example, if a cut point falls one-third | 
 |    of the distance between two sample values, ``100`` and ``112``, the | 
 |    cut-point will evaluate to ``104``. | 
 |  | 
 |    The *method* for computing quantiles can be varied depending on | 
 |    whether the *data* includes or excludes the lowest and | 
 |    highest possible values from the population. | 
 |  | 
 |    The default *method* is "exclusive" and is used for data sampled from | 
 |    a population that can have more extreme values than found in the | 
 |    samples.  The portion of the population falling below the *i-th* of | 
 |    *m* sorted data points is computed as ``i / (m + 1)``.  Given nine | 
 |    sample values, the method sorts them and assigns the following | 
 |    percentiles: 10%, 20%, 30%, 40%, 50%, 60%, 70%, 80%, 90%. | 
 |  | 
 |    Setting the *method* to "inclusive" is used for describing population | 
 |    data or for samples that are known to include the most extreme values | 
 |    from the population.  The minimum value in *data* is treated as the 0th | 
 |    percentile and the maximum value is treated as the 100th percentile. | 
 |    The portion of the population falling below the *i-th* of *m* sorted | 
 |    data points is computed as ``(i - 1) / (m - 1)``.  Given 11 sample | 
 |    values, the method sorts them and assigns the following percentiles: | 
 |    0%, 10%, 20%, 30%, 40%, 50%, 60%, 70%, 80%, 90%, 100%. | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |         # Decile cut points for empirically sampled data | 
 |         >>> data = [105, 129, 87, 86, 111, 111, 89, 81, 108, 92, 110, | 
 |         ...         100, 75, 105, 103, 109, 76, 119, 99, 91, 103, 129, | 
 |         ...         106, 101, 84, 111, 74, 87, 86, 103, 103, 106, 86, | 
 |         ...         111, 75, 87, 102, 121, 111, 88, 89, 101, 106, 95, | 
 |         ...         103, 107, 101, 81, 109, 104] | 
 |         >>> [round(q, 1) for q in quantiles(data, n=10)] | 
 |         [81.0, 86.2, 89.0, 99.4, 102.5, 103.6, 106.0, 109.8, 111.0] | 
 |  | 
 |    .. versionadded:: 3.8 | 
 |  | 
 | .. function:: covariance(x, y, /) | 
 |  | 
 |    Return the sample covariance of two inputs *x* and *y*. Covariance | 
 |    is a measure of the joint variability of two inputs. | 
 |  | 
 |    Both inputs must be of the same length (no less than two), otherwise | 
 |    :exc:`StatisticsError` is raised. | 
 |  | 
 |    Examples: | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> x = [1, 2, 3, 4, 5, 6, 7, 8, 9] | 
 |       >>> y = [1, 2, 3, 1, 2, 3, 1, 2, 3] | 
 |       >>> covariance(x, y) | 
 |       0.75 | 
 |       >>> z = [9, 8, 7, 6, 5, 4, 3, 2, 1] | 
 |       >>> covariance(x, z) | 
 |       -7.5 | 
 |       >>> covariance(z, x) | 
 |       -7.5 | 
 |  | 
 |    .. versionadded:: 3.10 | 
 |  | 
 | .. function:: correlation(x, y, /) | 
 |  | 
 |    Return the `Pearson's correlation coefficient | 
 |    <https://en.wikipedia.org/wiki/Pearson_correlation_coefficient>`_ | 
 |    for two inputs. Pearson's correlation coefficient *r* takes values | 
 |    between -1 and +1. It measures the strength and direction of the linear | 
 |    relationship, where +1 means very strong, positive linear relationship, | 
 |    -1 very strong, negative linear relationship, and 0 no linear relationship. | 
 |  | 
 |    Both inputs must be of the same length (no less than two), and need | 
 |    not to be constant, otherwise :exc:`StatisticsError` is raised. | 
 |  | 
 |    Examples: | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> x = [1, 2, 3, 4, 5, 6, 7, 8, 9] | 
 |       >>> y = [9, 8, 7, 6, 5, 4, 3, 2, 1] | 
 |       >>> correlation(x, x) | 
 |       1.0 | 
 |       >>> correlation(x, y) | 
 |       -1.0 | 
 |  | 
 |    .. versionadded:: 3.10 | 
 |  | 
 | .. function:: linear_regression(x, y, /, *, proportional=False) | 
 |  | 
 |    Return the slope and intercept of `simple linear regression | 
 |    <https://en.wikipedia.org/wiki/Simple_linear_regression>`_ | 
 |    parameters estimated using ordinary least squares. Simple linear | 
 |    regression describes the relationship between an independent variable *x* and | 
 |    a dependent variable *y* in terms of this linear function: | 
 |  | 
 |       *y = slope \* x + intercept + noise* | 
 |  | 
 |    where ``slope`` and ``intercept`` are the regression parameters that are | 
 |    estimated, and ``noise`` represents the | 
 |    variability of the data that was not explained by the linear regression | 
 |    (it is equal to the difference between predicted and actual values | 
 |    of the dependent variable). | 
 |  | 
 |    Both inputs must be of the same length (no less than two), and | 
 |    the independent variable *x* cannot be constant; | 
 |    otherwise a :exc:`StatisticsError` is raised. | 
 |  | 
 |    For example, we can use the `release dates of the Monty | 
 |    Python films <https://en.wikipedia.org/wiki/Monty_Python#Films>`_ | 
 |    to predict the cumulative number of Monty Python films | 
 |    that would have been produced by 2019 | 
 |    assuming that they had kept the pace. | 
 |  | 
 |    .. doctest:: | 
 |  | 
 |       >>> year = [1971, 1975, 1979, 1982, 1983] | 
 |       >>> films_total = [1, 2, 3, 4, 5] | 
 |       >>> slope, intercept = linear_regression(year, films_total) | 
 |       >>> round(slope * 2019 + intercept) | 
 |       16 | 
 |  | 
 |    If *proportional* is true, the independent variable *x* and the | 
 |    dependent variable *y* are assumed to be directly proportional. | 
 |    The data is fit to a line passing through the origin. | 
 |    Since the *intercept* will always be 0.0, the underlying linear | 
 |    function simplifies to: | 
 |  | 
 |       *y = slope \* x + noise* | 
 |  | 
 |    .. versionadded:: 3.10 | 
 |  | 
 |    .. versionchanged:: 3.11 | 
 |       Added support for *proportional*. | 
 |  | 
 | Exceptions | 
 | ---------- | 
 |  | 
 | A single exception is defined: | 
 |  | 
 | .. exception:: StatisticsError | 
 |  | 
 |    Subclass of :exc:`ValueError` for statistics-related exceptions. | 
 |  | 
 |  | 
 | :class:`NormalDist` objects | 
 | --------------------------- | 
 |  | 
 | :class:`NormalDist` is a tool for creating and manipulating normal | 
 | distributions of a `random variable | 
 | <http://www.stat.yale.edu/Courses/1997-98/101/ranvar.htm>`_.  It is a | 
 | class that treats the mean and standard deviation of data | 
 | measurements as a single entity. | 
 |  | 
 | Normal distributions arise from the `Central Limit Theorem | 
 | <https://en.wikipedia.org/wiki/Central_limit_theorem>`_ and have a wide range | 
 | of applications in statistics. | 
 |  | 
 | .. class:: NormalDist(mu=0.0, sigma=1.0) | 
 |  | 
 |     Returns a new *NormalDist* object where *mu* represents the `arithmetic | 
 |     mean <https://en.wikipedia.org/wiki/Arithmetic_mean>`_ and *sigma* | 
 |     represents the `standard deviation | 
 |     <https://en.wikipedia.org/wiki/Standard_deviation>`_. | 
 |  | 
 |     If *sigma* is negative, raises :exc:`StatisticsError`. | 
 |  | 
 |     .. attribute:: mean | 
 |  | 
 |        A read-only property for the `arithmetic mean | 
 |        <https://en.wikipedia.org/wiki/Arithmetic_mean>`_ of a normal | 
 |        distribution. | 
 |  | 
 |     .. attribute:: median | 
 |  | 
 |        A read-only property for the `median | 
 |        <https://en.wikipedia.org/wiki/Median>`_ of a normal | 
 |        distribution. | 
 |  | 
 |     .. attribute:: mode | 
 |  | 
 |        A read-only property for the `mode | 
 |        <https://en.wikipedia.org/wiki/Mode_(statistics)>`_ of a normal | 
 |        distribution. | 
 |  | 
 |     .. attribute:: stdev | 
 |  | 
 |        A read-only property for the `standard deviation | 
 |        <https://en.wikipedia.org/wiki/Standard_deviation>`_ of a normal | 
 |        distribution. | 
 |  | 
 |     .. attribute:: variance | 
 |  | 
 |        A read-only property for the `variance | 
 |        <https://en.wikipedia.org/wiki/Variance>`_ of a normal | 
 |        distribution. Equal to the square of the standard deviation. | 
 |  | 
 |     .. classmethod:: NormalDist.from_samples(data) | 
 |  | 
 |        Makes a normal distribution instance with *mu* and *sigma* parameters | 
 |        estimated from the *data* using :func:`fmean` and :func:`stdev`. | 
 |  | 
 |        The *data* can be any :term:`iterable` and should consist of values | 
 |        that can be converted to type :class:`float`.  If *data* does not | 
 |        contain at least two elements, raises :exc:`StatisticsError` because it | 
 |        takes at least one point to estimate a central value and at least two | 
 |        points to estimate dispersion. | 
 |  | 
 |     .. method:: NormalDist.samples(n, *, seed=None) | 
 |  | 
 |        Generates *n* random samples for a given mean and standard deviation. | 
 |        Returns a :class:`list` of :class:`float` values. | 
 |  | 
 |        If *seed* is given, creates a new instance of the underlying random | 
 |        number generator.  This is useful for creating reproducible results, | 
 |        even in a multi-threading context. | 
 |  | 
 |     .. method:: NormalDist.pdf(x) | 
 |  | 
 |        Using a `probability density function (pdf) | 
 |        <https://en.wikipedia.org/wiki/Probability_density_function>`_, compute | 
 |        the relative likelihood that a random variable *X* will be near the | 
 |        given value *x*.  Mathematically, it is the limit of the ratio ``P(x <= | 
 |        X < x+dx) / dx`` as *dx* approaches zero. | 
 |  | 
 |        The relative likelihood is computed as the probability of a sample | 
 |        occurring in a narrow range divided by the width of the range (hence | 
 |        the word "density").  Since the likelihood is relative to other points, | 
 |        its value can be greater than `1.0`. | 
 |  | 
 |     .. method:: NormalDist.cdf(x) | 
 |  | 
 |        Using a `cumulative distribution function (cdf) | 
 |        <https://en.wikipedia.org/wiki/Cumulative_distribution_function>`_, | 
 |        compute the probability that a random variable *X* will be less than or | 
 |        equal to *x*.  Mathematically, it is written ``P(X <= x)``. | 
 |  | 
 |     .. method:: NormalDist.inv_cdf(p) | 
 |  | 
 |        Compute the inverse cumulative distribution function, also known as the | 
 |        `quantile function <https://en.wikipedia.org/wiki/Quantile_function>`_ | 
 |        or the `percent-point | 
 |        <https://www.statisticshowto.datasciencecentral.com/inverse-distribution-function/>`_ | 
 |        function.  Mathematically, it is written ``x : P(X <= x) = p``. | 
 |  | 
 |        Finds the value *x* of the random variable *X* such that the | 
 |        probability of the variable being less than or equal to that value | 
 |        equals the given probability *p*. | 
 |  | 
 |     .. method:: NormalDist.overlap(other) | 
 |  | 
 |        Measures the agreement between two normal probability distributions. | 
 |        Returns a value between 0.0 and 1.0 giving `the overlapping area for | 
 |        the two probability density functions | 
 |        <https://www.rasch.org/rmt/rmt101r.htm>`_. | 
 |  | 
 |     .. method:: NormalDist.quantiles(n=4) | 
 |  | 
 |         Divide the normal distribution into *n* continuous intervals with | 
 |         equal probability.  Returns a list of (n - 1) cut points separating | 
 |         the intervals. | 
 |  | 
 |         Set *n* to 4 for quartiles (the default).  Set *n* to 10 for deciles. | 
 |         Set *n* to 100 for percentiles which gives the 99 cuts points that | 
 |         separate the normal distribution into 100 equal sized groups. | 
 |  | 
 |     .. method:: NormalDist.zscore(x) | 
 |  | 
 |         Compute the | 
 |         `Standard Score <https://www.statisticshowto.com/probability-and-statistics/z-score/>`_ | 
 |         describing *x* in terms of the number of standard deviations | 
 |         above or below the mean of the normal distribution: | 
 |         ``(x - mean) / stdev``. | 
 |  | 
 |         .. versionadded:: 3.9 | 
 |  | 
 |     Instances of :class:`NormalDist` support addition, subtraction, | 
 |     multiplication and division by a constant.  These operations | 
 |     are used for translation and scaling.  For example: | 
 |  | 
 |     .. doctest:: | 
 |  | 
 |         >>> temperature_february = NormalDist(5, 2.5)             # Celsius | 
 |         >>> temperature_february * (9/5) + 32                     # Fahrenheit | 
 |         NormalDist(mu=41.0, sigma=4.5) | 
 |  | 
 |     Dividing a constant by an instance of :class:`NormalDist` is not supported | 
 |     because the result wouldn't be normally distributed. | 
 |  | 
 |     Since normal distributions arise from additive effects of independent | 
 |     variables, it is possible to `add and subtract two independent normally | 
 |     distributed random variables | 
 |     <https://en.wikipedia.org/wiki/Sum_of_normally_distributed_random_variables>`_ | 
 |     represented as instances of :class:`NormalDist`.  For example: | 
 |  | 
 |     .. doctest:: | 
 |  | 
 |         >>> birth_weights = NormalDist.from_samples([2.5, 3.1, 2.1, 2.4, 2.7, 3.5]) | 
 |         >>> drug_effects = NormalDist(0.4, 0.15) | 
 |         >>> combined = birth_weights + drug_effects | 
 |         >>> round(combined.mean, 1) | 
 |         3.1 | 
 |         >>> round(combined.stdev, 1) | 
 |         0.5 | 
 |  | 
 |     .. versionadded:: 3.8 | 
 |  | 
 |  | 
 | :class:`NormalDist` Examples and Recipes | 
 | ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ | 
 |  | 
 | :class:`NormalDist` readily solves classic probability problems. | 
 |  | 
 | For example, given `historical data for SAT exams | 
 | <https://nces.ed.gov/programs/digest/d17/tables/dt17_226.40.asp>`_ showing | 
 | that scores are normally distributed with a mean of 1060 and a standard | 
 | deviation of 195, determine the percentage of students with test scores | 
 | between 1100 and 1200, after rounding to the nearest whole number: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> sat = NormalDist(1060, 195) | 
 |     >>> fraction = sat.cdf(1200 + 0.5) - sat.cdf(1100 - 0.5) | 
 |     >>> round(fraction * 100.0, 1) | 
 |     18.4 | 
 |  | 
 | Find the `quartiles <https://en.wikipedia.org/wiki/Quartile>`_ and `deciles | 
 | <https://en.wikipedia.org/wiki/Decile>`_ for the SAT scores: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> list(map(round, sat.quantiles())) | 
 |     [928, 1060, 1192] | 
 |     >>> list(map(round, sat.quantiles(n=10))) | 
 |     [810, 896, 958, 1011, 1060, 1109, 1162, 1224, 1310] | 
 |  | 
 | To estimate the distribution for a model than isn't easy to solve | 
 | analytically, :class:`NormalDist` can generate input samples for a `Monte | 
 | Carlo simulation <https://en.wikipedia.org/wiki/Monte_Carlo_method>`_: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> def model(x, y, z): | 
 |     ...     return (3*x + 7*x*y - 5*y) / (11 * z) | 
 |     ... | 
 |     >>> n = 100_000 | 
 |     >>> X = NormalDist(10, 2.5).samples(n, seed=3652260728) | 
 |     >>> Y = NormalDist(15, 1.75).samples(n, seed=4582495471) | 
 |     >>> Z = NormalDist(50, 1.25).samples(n, seed=6582483453) | 
 |     >>> quantiles(map(model, X, Y, Z))       # doctest: +SKIP | 
 |     [1.4591308524824727, 1.8035946855390597, 2.175091447274739] | 
 |  | 
 | Normal distributions can be used to approximate `Binomial | 
 | distributions <http://mathworld.wolfram.com/BinomialDistribution.html>`_ | 
 | when the sample size is large and when the probability of a successful | 
 | trial is near 50%. | 
 |  | 
 | For example, an open source conference has 750 attendees and two rooms with a | 
 | 500 person capacity.  There is a talk about Python and another about Ruby. | 
 | In previous conferences, 65% of the attendees preferred to listen to Python | 
 | talks.  Assuming the population preferences haven't changed, what is the | 
 | probability that the Python room will stay within its capacity limits? | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> n = 750             # Sample size | 
 |     >>> p = 0.65            # Preference for Python | 
 |     >>> q = 1.0 - p         # Preference for Ruby | 
 |     >>> k = 500             # Room capacity | 
 |  | 
 |     >>> # Approximation using the cumulative normal distribution | 
 |     >>> from math import sqrt | 
 |     >>> round(NormalDist(mu=n*p, sigma=sqrt(n*p*q)).cdf(k + 0.5), 4) | 
 |     0.8402 | 
 |  | 
 |     >>> # Solution using the cumulative binomial distribution | 
 |     >>> from math import comb, fsum | 
 |     >>> round(fsum(comb(n, r) * p**r * q**(n-r) for r in range(k+1)), 4) | 
 |     0.8402 | 
 |  | 
 |     >>> # Approximation using a simulation | 
 |     >>> from random import seed, choices | 
 |     >>> seed(8675309) | 
 |     >>> def trial(): | 
 |     ...     return choices(('Python', 'Ruby'), (p, q), k=n).count('Python') | 
 |     >>> mean(trial() <= k for i in range(10_000)) | 
 |     0.8398 | 
 |  | 
 | Normal distributions commonly arise in machine learning problems. | 
 |  | 
 | Wikipedia has a `nice example of a Naive Bayesian Classifier | 
 | <https://en.wikipedia.org/wiki/Naive_Bayes_classifier#Sex_classification>`_. | 
 | The challenge is to predict a person's gender from measurements of normally | 
 | distributed features including height, weight, and foot size. | 
 |  | 
 | We're given a training dataset with measurements for eight people.  The | 
 | measurements are assumed to be normally distributed, so we summarize the data | 
 | with :class:`NormalDist`: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> height_male = NormalDist.from_samples([6, 5.92, 5.58, 5.92]) | 
 |     >>> height_female = NormalDist.from_samples([5, 5.5, 5.42, 5.75]) | 
 |     >>> weight_male = NormalDist.from_samples([180, 190, 170, 165]) | 
 |     >>> weight_female = NormalDist.from_samples([100, 150, 130, 150]) | 
 |     >>> foot_size_male = NormalDist.from_samples([12, 11, 12, 10]) | 
 |     >>> foot_size_female = NormalDist.from_samples([6, 8, 7, 9]) | 
 |  | 
 | Next, we encounter a new person whose feature measurements are known but whose | 
 | gender is unknown: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |     >>> ht = 6.0        # height | 
 |     >>> wt = 130        # weight | 
 |     >>> fs = 8          # foot size | 
 |  | 
 | Starting with a 50% `prior probability | 
 | <https://en.wikipedia.org/wiki/Prior_probability>`_ of being male or female, | 
 | we compute the posterior as the prior times the product of likelihoods for the | 
 | feature measurements given the gender: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |    >>> prior_male = 0.5 | 
 |    >>> prior_female = 0.5 | 
 |    >>> posterior_male = (prior_male * height_male.pdf(ht) * | 
 |    ...                   weight_male.pdf(wt) * foot_size_male.pdf(fs)) | 
 |  | 
 |    >>> posterior_female = (prior_female * height_female.pdf(ht) * | 
 |    ...                     weight_female.pdf(wt) * foot_size_female.pdf(fs)) | 
 |  | 
 | The final prediction goes to the largest posterior. This is known as the | 
 | `maximum a posteriori | 
 | <https://en.wikipedia.org/wiki/Maximum_a_posteriori_estimation>`_ or MAP: | 
 |  | 
 | .. doctest:: | 
 |  | 
 |   >>> 'male' if posterior_male > posterior_female else 'female' | 
 |   'female' | 
 |  | 
 |  | 
 | .. | 
 |    # 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; |