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mixtools (version 1.0.4)

wquantile: Weighted quantiles

Description

Functions to compute weighted quantiles and the weighted interquartile range.

Usage

wquantile(wt = rep(1,length(x)), x, probs, already.sorted = FALSE, already.normalized = FALSE) wIQR(wt = rep(1,length(x)), x, already.sorted = FALSE, already.normalized = FALSE)

Arguments

wt
Vector of weights
x
Vector of data, same length as wt
probs
Numeric vector of probabilities with values in [0,1].
already.sorted
If FALSE, sort wt and x in increasing order of x. If TRUE, it is assumed that wt and x are already sorted.
already.normalized
If FALSE, normalize wt by diving each entry by the sum of all entries. If TRUE, it is assumed that sum(wt)==1

Value

Returns the sample quantiles or interquartile range of a discrete distribution with support points x and corresponding probability masses wt

Details

wquantile uses the findInterval function. wIQR calls the wquantile function.

See Also

npEM

Examples

Run this code
IQR(1:10)
wIQR(x=1:10) # Note:  Different algorithm than IQR function
wIQR(1:10,1:10) # Weighted quartiles are now 4 and 8

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