SDPM {ream} | R Documentation |
Sequential Dual Process Model
Description
The Sequential Dual Process Model (SDPM) is similar in principle to the DSTP, but instead
of simultaneous accumulators, it contains sequential accumulator s. Its drift rate is given by
v(x,t) = w(t)*\mu
where w(t)
is 0 if the second process hasn't crossed a
threshold yet and 1 if it has. The noise scale has a similar structure D(x,t) = w(t)*\sigma
.
Usage
dSDPM(rt, resp, phi, x_res = "default", t_res = "default")
pSDPM(rt, resp, phi, x_res = "default", t_res = "default")
rSDPM(n, phi, dt = 1e-05)
Arguments
rt |
vector of response times
|
resp |
vector of responses ("upper" and "lower")
|
phi |
parameter vector in the following order:
Non-decision time (t_{nd} ). Time for non-decision processes such as stimulus
encoding and response execution. Total decision time t is the sum of the decision
and non-decision times.
Relative start (w ). Sets the start point of accumulation as a ratio of
the two decision thresholds. Related to the absolute start z point via equation
z = b_l + w*(b_u - b_l) .
Relative start of the target selection process (w_{ts} ). Sets the start point
of accumulation for the target selection process as a ratio of the two decision
thresholds. Related to the absolute start z_{ts} point via equation
z_{ts} = b_{lts} + w_ts*(b_{uts} – b_{lts}) .
Stimulus strength (\mu ).
Stimulus strength of process 2 (\mu_2 ).
Noise scale (\sigma ). Model scaling parameter.
Effective noise scale of continuous approximation (\sigma_{eff} ). See ream
publication for full description.
Decision thresholds (b ). Sets the location of each decision threshold. The
upper threshold b_u is above 0 and the lower threshold b_l is below 0 such that
b_u = -b_l = b . The threshold separation a = 2b .
Target selection decision thresholds (b_{ts} ). Sets the location of each decision
threshold for the target selection process. The upper threshold b_{uts} is above 0
and the lower threshold b_{lts} is below 0 such that b_{uts} = -b_{lts} = b_{ts} . The
threshold separation a_{ts} = 2b_{ts} .
Contamination (g ). Sets the strength of the contamination process. Contamination
process is a uniform distribution f_c(t) where f_c(t) = 1/(g_u-g_l)
if g_l <= t <= g_u and f_c(t) = 0 if t < g_l or t > g_u . It is
combined with PDF f_i(t) to give the final combined distribution
f_{i,c}(t) = g*f_c(t) + (1-g)*f_i(t) , which is then output by the program.
If g = 0 , it just outputs f_i(t) .
Lower bound of contamination distribution (g_l ). See parameter g .
Upper bound of contamination distribution (g_u ). See parameter g .
|
x_res |
spatial/evidence resolution
|
t_res |
time resolution
|
n |
number of samples
|
dt |
step size of time. We recommend 0.00001 (1e-5)
|
Value
For the density a list of PDF values, log-PDF values, and the sum of the
log-PDFs, for the distribution function a list of of CDF values, log-CDF values,
and the sum of the log-CDFs, and for the random sampler a list of response
times (rt) and response thresholds (resp).
Author(s)
Raphael Hartmann & Matthew Murrow
References
Hübner, R., Steinhauser, M., & Lehle, C. (2010). A dual-stage two-phase model of
selective attention. Psychological Review, 117(3), 759-784.
Examples
# Probability density function
dSDPM(rt = c(1.2, 0.6, 0.4), resp = c("upper", "lower", "lower"),
phi = c(0.3, 1.0, 0.5, 1.0, 1.0, 1.0, 1.0, 0.75, 0.75, 0.0, 0.0, 1.0))
# Cumulative distribution function
pSDPM(rt = c(1.2, 0.6, 0.4), resp = c("upper", "lower", "lower"),
phi = c(0.3, 1.0, 0.5, 1.0, 1.0, 1.0, 1.0, 0.75, 0.75, 0.0, 0.0, 1.0))
# Random sampling
rSDPM(n = 100, phi = c(0.3, 1.0, 0.5, 1.0, 1.0, 1.0, 1.0, 0.75, 0.75, 0.0, 0.0, 1.0),
dt = 0.001)
[Package
ream version 1.0-3
Index]