Learn R Programming

evmix (version 1.0)

gammagpdcon: Gamma Bulk and GPD Tail Extreme Value Mixture Model with Continuity Constraint

Description

Density, cumulative distribution function, quantile function and random number generation for the extreme value mixture model with gamma for bulk distribution upto the threshold and conditional GPD above threshold with a continuity constraint. The parameters are the gamma shape gshape and scale gscale, threshold u and GPD shape xi and tail fraction phiu.

Usage

dgammagpdcon(x, gshape = 1, gscale = 1,
    u = qgamma(0.9, gshape, 1/gscale), xi = 0, phiu = TRUE,
    log = FALSE)

  pgammagpdcon(q, gshape = 1, gscale = 1,
    u = qgamma(0.9, gshape, 1/gscale), xi = 0, phiu = TRUE,
    lower.tail = TRUE)

  qgammagpdcon(p, gshape = 1, gscale = 1,
    u = qgamma(0.9, gshape, 1/gscale), xi = 0, phiu = TRUE,
    lower.tail = TRUE)

  rgammagpdcon(n = 1, gshape = 1, gscale = 1,
    u = qgamma(0.9, gshape, 1/gscale), xi = 0, phiu = TRUE)

Arguments

x
quantile
gshape
gamma shape (non-negative)
gscale
gamma scale (non-negative)
u
threshold (non-negative)
xi
shape parameter
phiu
probability of being above threshold [0,1] or TRUE
log
logical, if TRUE then log density
q
quantile
lower.tail
logical, if FALSE then upper tail probabilities
p
cumulative probability
n
sample size (non-negative integer)

Value

Details

Extreme value mixture model combining gamma distribution for the bulk below the threshold and GPD for upper tail with a continuity constraint. The user can pre-specify phiu permitting a parameterised value for the tail fraction $\phi_u$. Alternatively, when phiu=TRUE the tail fraction is estimated as the tail fraction from the gamma bulk model. The cumulative distribution function with tail fraction $\phi_u$ defined by the upper tail fraction of the gamma bulk model (phiu=TRUE), upto the threshold $0 < x \le u$, given by: $$F(x) = H(x)$$ and above the threshold $x > u$: $$F(x) = H(u) + [1 - H(u)] G(x)$$ where $H(x)$ and $G(x)$ are the gamma and conditional GPD cumulative distribution functions (i.e. pgamma(x, gshape, scale = gscale) and pgpd(x, u, sigmau, xi)). The cumulative distribution function for pre-specified $\phi_u$, upto the threshold $0 < x \le u$, is given by: $$F(x) = (1 - \phi_u) H(x)/H(u)$$ and above the threshold $x > u$: $$F(x) = \phi_u + [1 - \phi_u] G(x)$$ Notice that these definitions are equivalent when $\phi_u = 1 - H(u)$. The continuity constraint means that $(1 - \phi_u) h(u)/H(u) = \phi_u g(u)$ where $h(x)$ and $g(x)$ are the gamma and conditional GPD density functions (i.e. dgamma(x, gshape, scale = gscale) and dgpd(x, u, sigmau, xi)). The resulting GPD scale parameter is then: $$\sigma_u = \phi_u H(u) / [1 - \phi_u] h(u)$$. In the special case of where the tail fraction is defined by the bulk model this reduces to $$\sigma_u = [1 - H(u)] / h(u)$$. The gamma is defined on the non-negative reals, so the threshold must be non-negative. See gpd for details of GPD upper tail component and dgamma for details of gamma bulk component.

References

http://en.wikipedia.org/wiki/Gamma_distribution http://en.wikipedia.org/wiki/Generalized_Pareto_distribution Scarrott, C.J. and MacDonald, A. (2012). A review of extreme value threshold estimation and uncertainty quantification. REVSTAT - Statistical Journal 10(1), 33-59. Available from http://www.ine.pt/revstat/pdf/rs120102.pdf Behrens, C.N., Lopes, H.F. and Gamerman, D. (2004). Bayesian analysis of extreme events with threshold estimation. Statistical Modelling. 4(3), 227-244.

See Also

gpd, dgamma and dgammagpd Other gammagpdcon: fgammagpdcon, lgammagpdcon, nlgammagpdcon

Examples

Run this code
par(mfrow=c(2,2))
x = rgammagpdcon(1000, gshape = 2)
xx = seq(-1, 10, 0.01)
hist(x, breaks = 100, freq = FALSE, xlim = c(-1, 10))
lines(xx, dgammagpdcon(xx, gshape = 2))

# three tail behaviours
plot(xx, pgammagpdcon(xx, gshape = 2), type = "l")
lines(xx, pgammagpdcon(xx, gshape = 2, xi = 0.3), col = "red")
lines(xx, pgammagpdcon(xx, gshape = 2, xi = -0.3), col = "blue")
legend("topleft", paste("xi =",c(0, 0.3, -0.3)),
  col=c("black", "red", "blue"), lty = 1)

x = rgammagpdcon(1000, gshape = 2, u = 3, phiu = 0.2)
hist(x, breaks = 100, freq = FALSE, xlim = c(-1, 10))
lines(xx, dgammagpdcon(xx, gshape = 2, u = 3, phiu = 0.2))

plot(xx, dgammagpdcon(xx, gshape = 2, u = 3, xi=0, phiu = 0.2), type = "l")
lines(xx, dgammagpdcon(xx, gshape = 2, u = 3, xi=-0.2, phiu = 0.2), col = "red")
lines(xx, dgammagpdcon(xx, gshape = 2, u = 3, xi=0.2, phiu = 0.2), col = "blue")
legend("topright", c("xi = 0", "xi = 0.2", "xi = -0.2"),
  col=c("black", "red", "blue"), lty = 1)

Run the code above in your browser using DataLab