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										 |  |  | ##  Module statistics.py | 
					
						
							|  |  |  | ## | 
					
						
							|  |  |  | ##  Copyright (c) 2013 Steven D'Aprano <steve+python@pearwood.info>. | 
					
						
							|  |  |  | ## | 
					
						
							|  |  |  | ##  Licensed under the Apache License, Version 2.0 (the "License"); | 
					
						
							|  |  |  | ##  you may not use this file except in compliance with the License. | 
					
						
							|  |  |  | ##  You may obtain a copy of the License at | 
					
						
							|  |  |  | ## | 
					
						
							|  |  |  | ##  http://www.apache.org/licenses/LICENSE-2.0 | 
					
						
							|  |  |  | ## | 
					
						
							|  |  |  | ##  Unless required by applicable law or agreed to in writing, software | 
					
						
							|  |  |  | ##  distributed under the License is distributed on an "AS IS" BASIS, | 
					
						
							|  |  |  | ##  WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | 
					
						
							|  |  |  | ##  See the License for the specific language governing permissions and | 
					
						
							|  |  |  | ##  limitations under the License. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | """
 | 
					
						
							|  |  |  | Basic statistics module. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | This module provides functions for calculating statistics of data, including | 
					
						
							|  |  |  | averages, variance, and standard deviation. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculating averages | 
					
						
							|  |  |  | -------------------- | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | Function            Description | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | mean                Arithmetic mean (average) of data. | 
					
						
							|  |  |  | median              Median (middle value) of data. | 
					
						
							|  |  |  | median_low          Low median of data. | 
					
						
							|  |  |  | median_high         High median of data. | 
					
						
							|  |  |  | median_grouped      Median, or 50th percentile, of grouped data. | 
					
						
							|  |  |  | mode                Mode (most common value) of data. | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculate the arithmetic mean ("the average") of data: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | >>> mean([-1.0, 2.5, 3.25, 5.75]) | 
					
						
							|  |  |  | 2.625 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculate the standard median of discrete data: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | >>> median([2, 3, 4, 5]) | 
					
						
							|  |  |  | 3.5 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculate the median, or 50th percentile, of data grouped into class intervals | 
					
						
							|  |  |  | centred on the data values provided. E.g. if your data points are rounded to | 
					
						
							|  |  |  | the nearest whole number: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | >>> median_grouped([2, 2, 3, 3, 3, 4])  #doctest: +ELLIPSIS | 
					
						
							|  |  |  | 2.8333333333... | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | This should be interpreted in this way: you have two data points in the class | 
					
						
							|  |  |  | interval 1.5-2.5, three data points in the class interval 2.5-3.5, and one in | 
					
						
							|  |  |  | the class interval 3.5-4.5. The median of these data points is 2.8333... | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculating variability or spread | 
					
						
							|  |  |  | --------------------------------- | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | Function            Description | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | pvariance           Population variance of data. | 
					
						
							|  |  |  | variance            Sample variance of data. | 
					
						
							|  |  |  | pstdev              Population standard deviation of data. | 
					
						
							|  |  |  | stdev               Sample standard deviation of data. | 
					
						
							|  |  |  | ==================  ============================================= | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Calculate the standard deviation of sample data: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | >>> stdev([2.5, 3.25, 5.5, 11.25, 11.75])  #doctest: +ELLIPSIS | 
					
						
							|  |  |  | 4.38961843444... | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | If you have previously calculated the mean, you can pass it as the optional | 
					
						
							|  |  |  | second argument to the four "spread" functions to avoid recalculating it: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | >>> data = [1, 2, 2, 4, 4, 4, 5, 6] | 
					
						
							|  |  |  | >>> mu = mean(data) | 
					
						
							|  |  |  | >>> pvariance(data, mu) | 
					
						
							|  |  |  | 2.5 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | Exceptions | 
					
						
							|  |  |  | ---------- | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | A single exception is defined: StatisticsError is a subclass of ValueError. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | """
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | __all__ = [ 'StatisticsError', | 
					
						
							|  |  |  |             'pstdev', 'pvariance', 'stdev', 'variance', | 
					
						
							|  |  |  |             'median',  'median_low', 'median_high', 'median_grouped', | 
					
						
							|  |  |  |             'mean', 'mode', | 
					
						
							|  |  |  |           ] | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | import collections | 
					
						
							|  |  |  | import math | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | from fractions import Fraction | 
					
						
							|  |  |  | from decimal import Decimal | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # === Exceptions === | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | class StatisticsError(ValueError): | 
					
						
							|  |  |  |     pass | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # === Private utilities === | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def _sum(data, start=0): | 
					
						
							|  |  |  |     """_sum(data [, start]) -> value
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Return a high-precision sum of the given numeric data. If optional | 
					
						
							|  |  |  |     argument ``start`` is given, it is added to the total. If ``data`` is | 
					
						
							|  |  |  |     empty, ``start`` (defaulting to 0) is returned. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Examples | 
					
						
							|  |  |  |     -------- | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> _sum([3, 2.25, 4.5, -0.5, 1.0], 0.75) | 
					
						
							|  |  |  |     11.0 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Some sources of round-off error will be avoided: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> _sum([1e50, 1, -1e50] * 1000)  # Built-in sum returns zero. | 
					
						
							|  |  |  |     1000.0 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Fractions and Decimals are also supported: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> from fractions import Fraction as F | 
					
						
							|  |  |  |     >>> _sum([F(2, 3), F(7, 5), F(1, 4), F(5, 6)]) | 
					
						
							|  |  |  |     Fraction(63, 20) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> from decimal import Decimal as D | 
					
						
							|  |  |  |     >>> data = [D("0.1375"), D("0.2108"), D("0.3061"), D("0.0419")] | 
					
						
							|  |  |  |     >>> _sum(data) | 
					
						
							|  |  |  |     Decimal('0.6963') | 
					
						
							|  |  |  | 
 | 
					
						
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										 |  |  |     Mixed types are currently treated as an error, except that int is | 
					
						
							|  |  |  |     allowed. | 
					
						
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										 |  |  |     """
 | 
					
						
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										 |  |  |     # We fail as soon as we reach a value that is not an int or the type of | 
					
						
							|  |  |  |     # the first value which is not an int. E.g. _sum([int, int, float, int]) | 
					
						
							|  |  |  |     # is okay, but sum([int, int, float, Fraction]) is not. | 
					
						
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										 |  |  |     allowed_types = {int, type(start)} | 
					
						
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										 |  |  |     n, d = _exact_ratio(start) | 
					
						
							|  |  |  |     partials = {d: n}  # map {denominator: sum of numerators} | 
					
						
							|  |  |  |     # Micro-optimizations. | 
					
						
							|  |  |  |     exact_ratio = _exact_ratio | 
					
						
							|  |  |  |     partials_get = partials.get | 
					
						
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										 |  |  |     # Add numerators for each denominator. | 
					
						
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										 |  |  |     for x in data: | 
					
						
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										 |  |  |         _check_type(type(x), allowed_types) | 
					
						
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										 |  |  |         n, d = exact_ratio(x) | 
					
						
							|  |  |  |         partials[d] = partials_get(d, 0) + n | 
					
						
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										 |  |  |     # Find the expected result type. If allowed_types has only one item, it | 
					
						
							|  |  |  |     # will be int; if it has two, use the one which isn't int. | 
					
						
							|  |  |  |     assert len(allowed_types) in (1, 2) | 
					
						
							|  |  |  |     if len(allowed_types) == 1: | 
					
						
							|  |  |  |         assert allowed_types.pop() is int | 
					
						
							|  |  |  |         T = int | 
					
						
							|  |  |  |     else: | 
					
						
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										 |  |  |         T = (allowed_types - {int}).pop() | 
					
						
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										 |  |  |     if None in partials: | 
					
						
							|  |  |  |         assert issubclass(T, (float, Decimal)) | 
					
						
							|  |  |  |         assert not math.isfinite(partials[None]) | 
					
						
							|  |  |  |         return T(partials[None]) | 
					
						
							|  |  |  |     total = Fraction() | 
					
						
							|  |  |  |     for d, n in sorted(partials.items()): | 
					
						
							|  |  |  |         total += Fraction(n, d) | 
					
						
							|  |  |  |     if issubclass(T, int): | 
					
						
							|  |  |  |         assert total.denominator == 1 | 
					
						
							|  |  |  |         return T(total.numerator) | 
					
						
							|  |  |  |     if issubclass(T, Decimal): | 
					
						
							|  |  |  |         return T(total.numerator)/total.denominator | 
					
						
							|  |  |  |     return T(total) | 
					
						
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 | 
					
						
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										 |  |  | def _check_type(T, allowed): | 
					
						
							|  |  |  |     if T not in allowed: | 
					
						
							|  |  |  |         if len(allowed) == 1: | 
					
						
							|  |  |  |             allowed.add(T) | 
					
						
							|  |  |  |         else: | 
					
						
							|  |  |  |             types = ', '.join([t.__name__ for t in allowed] + [T.__name__]) | 
					
						
							|  |  |  |             raise TypeError("unsupported mixed types: %s" % types) | 
					
						
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										 |  |  | def _exact_ratio(x): | 
					
						
							|  |  |  |     """Convert Real number x exactly to (numerator, denominator) pair.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> _exact_ratio(0.25) | 
					
						
							|  |  |  |     (1, 4) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     x is expected to be an int, Fraction, Decimal or float. | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     try: | 
					
						
							|  |  |  |         try: | 
					
						
							|  |  |  |             # int, Fraction | 
					
						
							|  |  |  |             return (x.numerator, x.denominator) | 
					
						
							|  |  |  |         except AttributeError: | 
					
						
							|  |  |  |             # float | 
					
						
							|  |  |  |             try: | 
					
						
							|  |  |  |                 return x.as_integer_ratio() | 
					
						
							|  |  |  |             except AttributeError: | 
					
						
							|  |  |  |                 # Decimal | 
					
						
							|  |  |  |                 try: | 
					
						
							|  |  |  |                     return _decimal_to_ratio(x) | 
					
						
							|  |  |  |                 except AttributeError: | 
					
						
							|  |  |  |                     msg = "can't convert type '{}' to numerator/denominator" | 
					
						
							|  |  |  |                     raise TypeError(msg.format(type(x).__name__)) from None | 
					
						
							|  |  |  |     except (OverflowError, ValueError): | 
					
						
							|  |  |  |         # INF or NAN | 
					
						
							|  |  |  |         if __debug__: | 
					
						
							|  |  |  |             # Decimal signalling NANs cannot be converted to float :-( | 
					
						
							|  |  |  |             if isinstance(x, Decimal): | 
					
						
							|  |  |  |                 assert not x.is_finite() | 
					
						
							|  |  |  |             else: | 
					
						
							|  |  |  |                 assert not math.isfinite(x) | 
					
						
							|  |  |  |         return (x, None) | 
					
						
							|  |  |  | 
 | 
					
						
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 | 
					
						
							|  |  |  | # FIXME This is faster than Fraction.from_decimal, but still too slow. | 
					
						
							|  |  |  | def _decimal_to_ratio(d): | 
					
						
							|  |  |  |     """Convert Decimal d to exact integer ratio (numerator, denominator).
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> from decimal import Decimal | 
					
						
							|  |  |  |     >>> _decimal_to_ratio(Decimal("2.6")) | 
					
						
							|  |  |  |     (26, 10) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     sign, digits, exp = d.as_tuple() | 
					
						
							|  |  |  |     if exp in ('F', 'n', 'N'):  # INF, NAN, sNAN | 
					
						
							|  |  |  |         assert not d.is_finite() | 
					
						
							|  |  |  |         raise ValueError | 
					
						
							|  |  |  |     num = 0 | 
					
						
							|  |  |  |     for digit in digits: | 
					
						
							|  |  |  |         num = num*10 + digit | 
					
						
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										 |  |  |     if exp < 0: | 
					
						
							|  |  |  |         den = 10**-exp | 
					
						
							|  |  |  |     else: | 
					
						
							|  |  |  |         num *= 10**exp | 
					
						
							|  |  |  |         den = 1 | 
					
						
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										 |  |  |     if sign: | 
					
						
							|  |  |  |         num = -num | 
					
						
							|  |  |  |     return (num, den) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def _counts(data): | 
					
						
							|  |  |  |     # Generate a table of sorted (value, frequency) pairs. | 
					
						
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										 |  |  |     table = collections.Counter(iter(data)).most_common() | 
					
						
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										 |  |  |     if not table: | 
					
						
							|  |  |  |         return table | 
					
						
							|  |  |  |     # Extract the values with the highest frequency. | 
					
						
							|  |  |  |     maxfreq = table[0][1] | 
					
						
							|  |  |  |     for i in range(1, len(table)): | 
					
						
							|  |  |  |         if table[i][1] != maxfreq: | 
					
						
							|  |  |  |             table = table[:i] | 
					
						
							|  |  |  |             break | 
					
						
							|  |  |  |     return table | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # === Measures of central tendency (averages) === | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def mean(data): | 
					
						
							|  |  |  |     """Return the sample arithmetic mean of data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> mean([1, 2, 3, 4, 4]) | 
					
						
							|  |  |  |     2.8 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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') | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     If ``data`` is empty, StatisticsError will be raised. | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     if iter(data) is data: | 
					
						
							|  |  |  |         data = list(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n < 1: | 
					
						
							|  |  |  |         raise StatisticsError('mean requires at least one data point') | 
					
						
							|  |  |  |     return _sum(data)/n | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # FIXME: investigate ways to calculate medians without sorting? Quickselect? | 
					
						
							|  |  |  | def median(data): | 
					
						
							|  |  |  |     """Return the median (middle value) of numeric data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     When the number of data points is odd, return the middle data point. | 
					
						
							|  |  |  |     When the number of data points is even, the median is interpolated by | 
					
						
							|  |  |  |     taking the average of the two middle values: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> median([1, 3, 5]) | 
					
						
							|  |  |  |     3 | 
					
						
							|  |  |  |     >>> median([1, 3, 5, 7]) | 
					
						
							|  |  |  |     4.0 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     data = sorted(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n == 0: | 
					
						
							|  |  |  |         raise StatisticsError("no median for empty data") | 
					
						
							|  |  |  |     if n%2 == 1: | 
					
						
							|  |  |  |         return data[n//2] | 
					
						
							|  |  |  |     else: | 
					
						
							|  |  |  |         i = n//2 | 
					
						
							|  |  |  |         return (data[i - 1] + data[i])/2 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def median_low(data): | 
					
						
							|  |  |  |     """Return the low median of numeric data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     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. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> median_low([1, 3, 5]) | 
					
						
							|  |  |  |     3 | 
					
						
							|  |  |  |     >>> median_low([1, 3, 5, 7]) | 
					
						
							|  |  |  |     3 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     data = sorted(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n == 0: | 
					
						
							|  |  |  |         raise StatisticsError("no median for empty data") | 
					
						
							|  |  |  |     if n%2 == 1: | 
					
						
							|  |  |  |         return data[n//2] | 
					
						
							|  |  |  |     else: | 
					
						
							|  |  |  |         return data[n//2 - 1] | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def median_high(data): | 
					
						
							|  |  |  |     """Return the high median of data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     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. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> median_high([1, 3, 5]) | 
					
						
							|  |  |  |     3 | 
					
						
							|  |  |  |     >>> median_high([1, 3, 5, 7]) | 
					
						
							|  |  |  |     5 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     data = sorted(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n == 0: | 
					
						
							|  |  |  |         raise StatisticsError("no median for empty data") | 
					
						
							|  |  |  |     return data[n//2] | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def median_grouped(data, interval=1): | 
					
						
							| 
									
										
										
										
											2015-10-27 22:00:41 -05:00
										 |  |  |     """Return the 50th percentile (median) of grouped continuous data.
 | 
					
						
							| 
									
										
										
										
											2013-10-19 11:50:09 -07:00
										 |  |  | 
 | 
					
						
							|  |  |  |     >>> median_grouped([1, 2, 2, 3, 4, 4, 4, 4, 4, 5]) | 
					
						
							|  |  |  |     3.7 | 
					
						
							|  |  |  |     >>> median_grouped([52, 52, 53, 54]) | 
					
						
							|  |  |  |     52.5 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     This calculates the median as the 50th percentile, and should be | 
					
						
							|  |  |  |     used when your data is continuous and grouped. In the above example, | 
					
						
							|  |  |  |     the values 1, 2, 3, etc. actually represent the midpoint of classes | 
					
						
							|  |  |  |     0.5-1.5, 1.5-2.5, 2.5-3.5, etc. The middle value falls somewhere in | 
					
						
							|  |  |  |     class 3.5-4.5, and interpolation is used to estimate it. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Optional argument ``interval`` represents the class interval, and | 
					
						
							|  |  |  |     defaults to 1. Changing the class interval naturally will change the | 
					
						
							|  |  |  |     interpolated 50th percentile value: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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. | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     data = sorted(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n == 0: | 
					
						
							|  |  |  |         raise StatisticsError("no median for empty data") | 
					
						
							|  |  |  |     elif n == 1: | 
					
						
							|  |  |  |         return data[0] | 
					
						
							|  |  |  |     # Find the value at the midpoint. Remember this corresponds to the | 
					
						
							|  |  |  |     # centre of the class interval. | 
					
						
							|  |  |  |     x = data[n//2] | 
					
						
							|  |  |  |     for obj in (x, interval): | 
					
						
							|  |  |  |         if isinstance(obj, (str, bytes)): | 
					
						
							|  |  |  |             raise TypeError('expected number but got %r' % obj) | 
					
						
							|  |  |  |     try: | 
					
						
							|  |  |  |         L = x - interval/2  # The lower limit of the median interval. | 
					
						
							|  |  |  |     except TypeError: | 
					
						
							|  |  |  |         # Mixed type. For now we just coerce to float. | 
					
						
							|  |  |  |         L = float(x) - float(interval)/2 | 
					
						
							|  |  |  |     cf = data.index(x)  # Number of values below the median interval. | 
					
						
							|  |  |  |     # FIXME The following line could be more efficient for big lists. | 
					
						
							|  |  |  |     f = data.count(x)  # Number of data points in the median interval. | 
					
						
							|  |  |  |     return L + interval*(n/2 - cf)/f | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def mode(data): | 
					
						
							|  |  |  |     """Return the most common data point from discrete or nominal data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     ``mode`` assumes discrete data, and returns a single value. This is the | 
					
						
							|  |  |  |     standard treatment of the mode as commonly taught in schools: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> mode([1, 1, 2, 3, 3, 3, 3, 4]) | 
					
						
							|  |  |  |     3 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     This also works with nominal (non-numeric) data: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> mode(["red", "blue", "blue", "red", "green", "red", "red"]) | 
					
						
							|  |  |  |     'red' | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     If there is not exactly one most common value, ``mode`` will raise | 
					
						
							|  |  |  |     StatisticsError. | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     # Generate a table of sorted (value, frequency) pairs. | 
					
						
							|  |  |  |     table = _counts(data) | 
					
						
							|  |  |  |     if len(table) == 1: | 
					
						
							|  |  |  |         return table[0][0] | 
					
						
							|  |  |  |     elif table: | 
					
						
							|  |  |  |         raise StatisticsError( | 
					
						
							|  |  |  |                 'no unique mode; found %d equally common values' % len(table) | 
					
						
							|  |  |  |                 ) | 
					
						
							|  |  |  |     else: | 
					
						
							|  |  |  |         raise StatisticsError('no mode for empty data') | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # === Measures of spread === | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | # See http://mathworld.wolfram.com/Variance.html | 
					
						
							|  |  |  | #     http://mathworld.wolfram.com/SampleVariance.html | 
					
						
							|  |  |  | #     http://en.wikipedia.org/wiki/Algorithms_for_calculating_variance | 
					
						
							|  |  |  | # | 
					
						
							|  |  |  | # Under no circumstances use the so-called "computational formula for | 
					
						
							|  |  |  | # variance", as that is only suitable for hand calculations with a small | 
					
						
							|  |  |  | # amount of low-precision data. It has terrible numeric properties. | 
					
						
							|  |  |  | # | 
					
						
							|  |  |  | # See a comparison of three computational methods here: | 
					
						
							|  |  |  | # http://www.johndcook.com/blog/2008/09/26/comparing-three-methods-of-computing-standard-deviation/ | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def _ss(data, c=None): | 
					
						
							|  |  |  |     """Return sum of square deviations of sequence data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     If ``c`` is None, the mean is calculated in one pass, and the deviations | 
					
						
							|  |  |  |     from the mean are calculated in a second pass. Otherwise, deviations are | 
					
						
							|  |  |  |     calculated from ``c`` as given. Use the second case with care, as it can | 
					
						
							|  |  |  |     lead to garbage results. | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     if c is None: | 
					
						
							|  |  |  |         c = mean(data) | 
					
						
							|  |  |  |     ss = _sum((x-c)**2 for x in data) | 
					
						
							|  |  |  |     # The following sum should mathematically equal zero, but due to rounding | 
					
						
							|  |  |  |     # error may not. | 
					
						
							|  |  |  |     ss -= _sum((x-c) for x in data)**2/len(data) | 
					
						
							|  |  |  |     assert not ss < 0, 'negative sum of square deviations: %f' % ss | 
					
						
							|  |  |  |     return ss | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def variance(data, xbar=None): | 
					
						
							|  |  |  |     """Return the sample variance of data.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     data should be an iterable of Real-valued numbers, with at least two | 
					
						
							|  |  |  |     values. The optional argument xbar, if given, should be the mean of | 
					
						
							|  |  |  |     the data. If it is missing or None, 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 ``pvariance``. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Examples: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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 recalculating it: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> m = mean(data) | 
					
						
							|  |  |  |     >>> variance(data, m) | 
					
						
							|  |  |  |     1.3720238095238095 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     This function does not check that ``xbar`` is actually the mean of | 
					
						
							|  |  |  |     ``data``. Giving arbitrary values for ``xbar`` may lead to invalid or | 
					
						
							|  |  |  |     impossible results. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Decimals and Fractions are supported: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     if iter(data) is data: | 
					
						
							|  |  |  |         data = list(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n < 2: | 
					
						
							|  |  |  |         raise StatisticsError('variance requires at least two data points') | 
					
						
							|  |  |  |     ss = _ss(data, xbar) | 
					
						
							|  |  |  |     return ss/(n-1) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def pvariance(data, mu=None): | 
					
						
							|  |  |  |     """Return the population variance of ``data``.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     data should be an iterable of Real-valued numbers, with at least one | 
					
						
							|  |  |  |     value. The optional argument mu, if given, should be the mean of | 
					
						
							|  |  |  |     the data. If it is missing or None, the mean is automatically calculated. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Use this function to calculate the variance from the entire population. | 
					
						
							|  |  |  |     To estimate the variance from a sample, the ``variance`` function is | 
					
						
							|  |  |  |     usually a better choice. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Examples: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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 the data, you can pass it as | 
					
						
							|  |  |  |     the optional second argument to avoid recalculating it: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> mu = mean(data) | 
					
						
							|  |  |  |     >>> pvariance(data, mu) | 
					
						
							|  |  |  |     1.25 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     This function does not check that ``mu`` is actually the mean of ``data``. | 
					
						
							|  |  |  |     Giving arbitrary values for ``mu`` may lead to invalid or impossible | 
					
						
							|  |  |  |     results. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     Decimals and Fractions are supported: | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> 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) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     if iter(data) is data: | 
					
						
							|  |  |  |         data = list(data) | 
					
						
							|  |  |  |     n = len(data) | 
					
						
							|  |  |  |     if n < 1: | 
					
						
							|  |  |  |         raise StatisticsError('pvariance requires at least one data point') | 
					
						
							|  |  |  |     ss = _ss(data, mu) | 
					
						
							|  |  |  |     return ss/n | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def stdev(data, xbar=None): | 
					
						
							|  |  |  |     """Return the square root of the sample variance.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     See ``variance`` for arguments and other details. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> stdev([1.5, 2.5, 2.5, 2.75, 3.25, 4.75]) | 
					
						
							|  |  |  |     1.0810874155219827 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     var = variance(data, xbar) | 
					
						
							|  |  |  |     try: | 
					
						
							|  |  |  |         return var.sqrt() | 
					
						
							|  |  |  |     except AttributeError: | 
					
						
							|  |  |  |         return math.sqrt(var) | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | def pstdev(data, mu=None): | 
					
						
							|  |  |  |     """Return the square root of the population variance.
 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     See ``pvariance`` for arguments and other details. | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     >>> pstdev([1.5, 2.5, 2.5, 2.75, 3.25, 4.75]) | 
					
						
							|  |  |  |     0.986893273527251 | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |     """
 | 
					
						
							|  |  |  |     var = pvariance(data, mu) | 
					
						
							|  |  |  |     try: | 
					
						
							|  |  |  |         return var.sqrt() | 
					
						
							|  |  |  |     except AttributeError: | 
					
						
							|  |  |  |         return math.sqrt(var) |