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39 changes: 39 additions & 0 deletions 39 Lib/statistics.py
Original file line number Diff line number Diff line change
Expand Up @@ -564,6 +564,45 @@ def multimode(data):
maxcount, mode_items = next(groupby(counts, key=itemgetter(1)), (0, []))
return list(map(itemgetter(0), mode_items))

# Notes on methods for computing quantiles
# ----------------------------------------
#
# There is no one perfect way to compute quantiles. Here we offer
# two methods that serve common needs. Most other packages
# surveyed offered at least one or both of these two, making them
# "standard" in the sense of "widely-adopted and reproducible".
# They are also easy to explain, easy to compute manually, and have
# straight-forward interpretations that aren't surprising.

# The default method is known as "R6", "PERCENTILE.EXC", or "expected
# value of rank order statistics". The alternative method is known as
# "R7", "PERCENTILE.INC", or "mode of rank order statistics".

# For sample data where there is a positive probability for values
# beyond the range of the data, the R6 exclusive method is a
# reasonable choice. Consider a random sample of nine values from a
# population with a uniform distribution from 0.0 to 100.0. The
# distribution of the third ranked sample point is described by
# betavariate(alpha=3, beta=7) which has mode=0.250, median=0.286, and
# mean=0.300. Only the latter (which corresponds with R6) gives the
# desired cut point with 30% of the population falling below that
# value, making it comparable to a result from an inv_cdf() function.

# For describing population data where the end points are known to
# be included in the data, the R7 inclusive method is a reasonable
# choice. Instead of the mean, it uses the mode of the beta
# distribution for the interior points. Per Hyndman & Fan, "One nice
# property is that the vertices of Q7(p) divide the range into n - 1
# intervals, and exactly 100p% of the intervals lie to the left of
# Q7(p) and 100(1 - p)% of the intervals lie to the right of Q7(p)."

# If the need arises, we could add method="median" for a median
# unbiased, distribution-free alternative. Also if needed, the
# distribution-free approaches could be augmented by adding
# method='normal'. However, for now, the position is that fewer
# options make for easier choices and that external packages can be
# used for anything more advanced.

def quantiles(dist, *, n=4, method='exclusive'):
'''Divide *dist* into *n* continuous intervals with equal probability.

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