@Beta @GwtIncompatible public final class Quantiles extends Object
To compute the median:
double myMedian = median().compute(myDataset);
median()has been statically imported.
To compute the 99th percentile:
double myPercentile99 = percentiles().index(99).compute(myDataset);
percentiles()has been statically imported.
To compute median and the 90th and 99th percentiles:
Map<Integer, Double> myPercentiles = percentiles().indexes(50, 90, 99).compute(myDataset);
percentiles()has been statically imported:
myPercentilesmaps the keys 50, 90, and 99, to their corresponding quantile values.
These examples all take a copy of your dataset. If you have a double array, you are okay with
it being arbitrarily reordered, and you want to avoid that copy, you can use
computeInPlace instead of
The definition of the kth q-quantile of N values is as follows: define x = k * (N - 1) / q; if
x is an integer, the result is the value which would appear at index x in the sorted dataset
(unless there are
NaN values, see below); otherwise, the result is the average
of the values which would appear at the indexes floor(x) and ceil(x) weighted by (1-frac(x)) and
frac(x) respectively. This is the same definition as used by Excel and by S, it is the Type 7
definition in R, and it is
wikipedia as providing "Linear interpolation of the modes for the order statistics for the
uniform distribution on [0,1]."
If any values in the input are
NaN then all values returned are
NaN. (This is the one occasion when the behaviour is not the same as you'd get from
Collections.sort(List<Double>) and selecting
the required value(s). Those methods would sort
NaN as if it is greater than
any other value and place them at the end of the dataset, even after
If required to do a weighted average between an infinity and a finite value, or between an
infinite value and itself, the infinite value is returned. If required to do a weighted average
NaN is returned (note that this will only happen if the
dataset contains no finite values).
The average time complexity of the computation is O(N) in the size of the dataset. There is a worst case time complexity of O(N^2). You are extremely unlikely to hit this quadratic case on randomly ordered data (the probability decreases faster than exponentially in N), but if you are passing in unsanitized user data then a malicious user could force it. A light shuffle of the data using an unpredictable seed should normally be enough to thwart this attack.
The time taken to compute multiple quantiles on the same dataset using
indexes is generally less than the total time taken to compute each of them separately, and
sometimes much less. For example, on a large enough dataset, computing the 90th and 99th
percentiles together takes about 55% as long as computing them separately.
Quantiles.ScaleAndIndex.compute(java.util.Collection<? extends java.lang.Number>) (in either
form), the memory requirement is 8*N bytes for the copy of the dataset plus an overhead which is
independent of N (but depends on the quantiles being computed). When calling
computeInPlace (in either form), only the overhead is required. The number of object allocations is independent of
N in both cases.
|Modifier and Type||Class and Description|
Describes the point in a fluent API chain where only the scale (i.e.
Describes the point in a fluent API chain where the scale and a single quantile index (i.e.
Describes the point in a fluent API chain where the scale and a multiple quantile indexes (i.e.
|Constructor and Description|
|Modifier and Type||Method and Description|
Specifies the computation of a median (i.e.
Specifies the computation of percentiles (i.e.
Specifies the computation of quartiles (i.e.
Specifies the computation of q-quantiles.
public static Quantiles.ScaleAndIndex median()
public static Quantiles.Scale quartiles()
public static Quantiles.Scale percentiles()
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