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Density, distribution function, quantile function and random generation for the Zipf distribution.
dzipf(x, N, shape, log = FALSE)
pzipf(q, N, shape, log.p = FALSE)
qzipf(p, N, shape)
rzipf(n, N, shape)
dzipf
gives the density,
pzipf
gives the cumulative distribution function,
qzipf
gives the quantile function, and
rzipf
generates random deviates.
T. W. Yee
This is a finite version of the zeta distribution.
See zetaff
for more details.
In general, these functions runs slower and slower as N
increases.
zipf
,
Zipfmb
.
N <- 10; shape <- 0.5; y <- 1:N
proby <- dzipf(y, N = N, shape = shape)
if (FALSE) plot(proby ~ y, type = "h", col = "blue",
ylim = c(0, 0.2), ylab = "Probability", lwd = 2, las = 1,
main = paste0("Zipf(N = ", N, ", shape = ", shape, ")"))
sum(proby) # Should be 1
max(abs(cumsum(proby) - pzipf(y, N = N, shape = shape))) # 0?
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