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VGAM (version 0.8-4.1)

Expectiles-Uniform: Expectiles of the Uniform Distribution

Description

Density function, distribution function, and expectile function and random generation for the distribution associated with the expectiles of a uniform distribution.

Usage

deunif(x, min = 0, max = 1, log = FALSE)
peunif(q, min = 0, max = 1, log = FALSE)
qeunif(p, min = 0, max = 1, Maxit_nr = 10, Tol_nr = 1.0e-6)
reunif(n, min = 0, max = 1)

Arguments

x, q
Vector of expectiles. See the terminology note below.
p
Vector of probabilities. These should lie in $(0,1)$.
n, min, max, log
See runif.
Maxit_nr
Numeric. Maximum number of Newton-Raphson iterations allowed. A warning is issued if convergence is not obtained for all p values.
Tol_nr
Numeric. Small positive value specifying the tolerance or precision to which the expectiles are computed.

Value

  • deunif(x) gives the density function $g(x)$. peunif(q) gives the distribution function $G(q)$. qeunif(p) gives the expectile function: the expectile $y$ such that $G(y) = p$. reunif(n) gives $n$ random variates from $G$.

Details

Jones (1994) elucidated on the property that the expectiles of a random variable $X$ with distribution function $F(x)$ correspond to the quantiles of a distribution $G(x)$ where $G$ is related by an explicit formula to $F$. In particular, let $y$ be the $p$-expectile of $F$. Then $y$ is the $p$-quantile of $G$ where $$p = G(y) = (P(y) - y F(y)) / (2[P(y) - y F(y)] + y - \mu),$$ and $\mu$ is the mean of $X$. The derivative of $G$ is $$g(y) = (\mu F(y) - P(y)) / (2[P(y) - y F(y)] + y - \mu)^2 .$$ Here, $P(y)$ is the partial moment $\int_{-\infty}^{y} x f(x) \, dx$ and $0 < p < 1$. The 0.5-expectile is the mean $\mu$ and the 0.5-quantile is the median.

A note about the terminology used here. Recall in the S language there are the dpqr-type functions associated with a distribution, e.g., dunif, punif, qunif, runif, for the uniform distribution. Here, unif corresponds to $F$ and eunif corresponds to $G$. The addition of ``e'' (for expectile) is for the `other' distribution associated with the parent distribution. Thus deunif is for $g$, peunif is for $G$, qeunif is for the inverse of $G$, reunif generates random variates from $g$.

For qeunif the Newton-Raphson algorithm is used to solve for $y$ satisfying $p = G(y)$. Numerical problems may occur when values of p are very close to 0 or 1.

References

Jones, M. C. (1994) Expectiles and M-quantiles are quantiles. Statistics and Probability Letters, 20, 149--153.

Yee, T. W. (2010) Vector generalized linear and additive quantile and expectile regression. In preparation.

See Also

deexp, denorm, dunif, dkoenker.

Examples

Run this code
my_p = 0.25; y = runif(nn <- 1000)
(myexp = qeunif(my_p))
sum(myexp - y[y <= myexp]) / sum(abs(myexp - y))  # Should be my_p
# Equivalently:
I1 = mean(y <= myexp) * mean( myexp - y[y <= myexp])
I2 = mean(y >  myexp) * mean(-myexp + y[y >  myexp])
I1 / (I1 + I2)  # Should be my_p
# Or:
I1 = sum( myexp - y[y <= myexp])
I2 = sum(-myexp + y[y >  myexp])

# Non-standard uniform
mymin = 1; mymax = 8
yy = runif(nn, mymin, mymax)
(myexp = qeunif(my_p, mymin, mymax))
sum(myexp - yy[yy <= myexp]) / sum(abs(myexp - yy)) # Should be my_p
peunif(mymin, mymin, mymax)     #  Should be 0
peunif(mymax, mymin, mymax)     #  Should be 1
peunif(mean(yy), mymin, mymax)  #  Should be 0.5
abs(qeunif(0.5, mymin, mymax) - mean(yy)) #  Should be 0
abs(qeunif(0.5, mymin, mymax) - (mymin+mymax)/2) #  Should be 0
abs(peunif(myexp, mymin, mymax) - my_p)  #  Should be 0
integrate(f = deunif, lower=mymin - 3, upper = mymax + 3,
          min=mymin, max=mymax) #  Should be 1

par(mfrow=c(2,1))
yy = seq(0.0, 1.0, len=nn)
plot(yy, deunif(yy), type="l", col="blue", ylim = c(0, 2),
     xlab = "y", ylab = "g(y)", main = "g(y) for Uniform(0,1)")
lines(yy, dunif(yy), col="darkgreen", lty="dotted", lwd=2) # 'original'

plot(yy, peunif(yy), type="l", col="blue", ylim = 0:1,
     xlab = "y", ylab = "G(y)", main = "G(y) for Uniform(0,1)")
abline(a=0.0, b=1.0, col="darkgreen", lty="dotted", lwd=2)
abline(v=0.5, h=0.5, col="red", lty="dashed")

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