dLTM_grid {ream} | R Documentation |
Generate Grid for PDF of the Linear Threshold Model
Description
Generate a grid of response-time values and the corresponding PDF values.
For more details on the model see, for example, dLTM
.
Usage
dLTM_grid(rt_max = 10, phi, x_res = "default", t_res = "default")
Arguments
rt_max |
maximal response time <- max(rt)
|
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) .
Stimulus strength (\mu ). Strength of the stimulus and used to set the drift
rate. For changing threshold models v(x,t) = \mu .
Noise scale (\sigma ). Model noise scale parameter.
Initial decision threshold location (b_0 ). Sets the location of each decision
threshold at time t = 0 .
Decision threshold slope (m ).
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
|
Value
list of RTs and corresponding defective PDFs at lower and upper threshold
Author(s)
Raphael Hartmann & Matthew Murrow
References
Murrow, M., & Holmes, W. R. (2023). PyBEAM: A Bayesian approach to parameter inference
for a wide class of binary evidence accumulation models. Behavior Research
Methods, 56(3), 2636-2656.
[Package
ream version 1.0-5
Index]