mixture2p_dist {bmm} | R Documentation |
Distribution functions for the two-parameter mixture model (mixture2p)
Description
Density, distribution, and random generation functions for the
two-parameter mixture model with the location of mu
, precision of memory
representations kappa
and probability of recalling items from memory
p_mem
.
Usage
dmixture2p(x, mu = 0, kappa = 5, p_mem = 0.6, log = FALSE)
pmixture2p(q, mu = 0, kappa = 7, p_mem = 0.8)
qmixture2p(p, mu = 0, kappa = 5, p_mem = 0.6)
rmixture2p(n, mu = 0, kappa = 5, p_mem = 0.6)
Arguments
x |
Vector of observed responses |
mu |
Vector of locations |
kappa |
Vector of precision values |
p_mem |
Vector of probabilities for memory recall |
log |
Logical; if |
q |
Vector of quantiles |
p |
Vector of probability |
n |
Number of observations to generate data for |
Value
dmixture2p
gives the density of the two-parameter mixture model,
pmixture2p
gives the cumulative distribution function of the
two-parameter mixture model, qmixture2p
gives the quantile function of
the two-parameter mixture model, and rmixture2p
gives the random
generation function for the two-parameter mixture model.
References
Zhang, W., & Luck, S. J. (2008). Discrete fixed-resolution representations in visual working memory. Nature, 453.
Examples
# generate random samples from the mixture2p model and overlay the density
r <- rmixture2p(10000, mu = 0, kappa = 4, p_mem = 0.8)
x <- seq(-pi,pi,length.out=10000)
d <- dmixture2p(x, mu = 0, kappa = 4, p_mem = 0.8)
hist(r, breaks=60, freq=FALSE)
lines(x,d,type="l", col="red")