function c = tapas_condhalluc_obs2_config %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% % % Contains the configuration for the response model used to analyze data from conditioned % hallucination paradigm by Powers & Corlett % %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% % % The rationale for this model is as follows: % % TO BE DESCRIBED... % % -------------------------------------------------------------------------------------------------- % Copyright (C) 2016 Christoph Mathys, TNU, UZH & ETHZ % % This file is part of the HGF toolbox, which is released under the terms of the GNU General Public % Licence (GPL), version 3. You can redistribute it and/or modify it under the terms of the GPL % (either version 3 or, at your option, any later version). For further details, see the file % COPYING or . % Config structure c = struct; % Model name c.model = 'tapas_condhalluc_obs2'; % Sufficient statistics of Gaussian parameter priors % Beta c.logbemu = log(48); c.logbesa = 1; % Nu c.lognumu = log(1/4); % Changed 12/6/16 to tighten fit. c.lognusa = 1/4; % Gather prior settings in vectors c.priormus = [ c.logbemu,... c.lognumu,... ]; c.priorsas = [ c.logbesa,... c.lognusa,... ]; % Model filehandle c.obs_fun = @tapas_condhalluc_obs2; % Handle to function that transforms observation parameters to their native space % from the space they are estimated in c.transp_obs_fun = @tapas_condhalluc_obs2_transp; return;