https://github.com/nwbarendregt/AdaptNormThresh
Tip revision: 2878a3d9f5a3b9b89a0084a897bef3414e9de4a2 authored by nwbarendregt on 03 May 2022, 15:08:29 UTC
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Tip revision: 2878a3d
RDMD_trial_generate.m
% RDMD_trial_generate.m
% Function that generates populations of belief trajectories for
% continuous 2AFC tasks with static SNR given by Eq. (8) in
% Barendregt et al., 2022.
function [y,p]= RDMD_trial_generate(m,T,dt,sigma,N_trial)
% Pre-allocate belief storage for belief with (y) and without (y_p) belief
% noise (y_p used for UGM simulations, where noise is added to filter
% rather than input):
y = zeros(N_trial,round(T/dt)+1); y_p = zeros(N_trial,round(T/dt)+1);
for i = 1:N_trial
for j = 2:(T/dt+1)
% Calculate white noise:
dW = sqrt(dt)*randn;
% Update observer belief:
y(i,j) = y(i,j-1)+m*dt+sqrt(2*m)*dW+sigma*randn;
y_p(i,j) = y(i,j-1)+m*dt+sqrt(2*m)*dW;
end
end
% Convert LLR y_p to a likelihood to use as input to the UGM:
p = exp(y_p)./(1+exp(y_p));
end