function c = tapas_bayes_optimal_categorical_config
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%
% Contains the configuraton for the estimation of Bayes optimal perceptual parameters
%
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%
% Usage:
% fitModel([], inputs, '', 'bayes_optimal_categorical_config', ...)
%
% Note that the first argument (responses) is empty.
%
% This optimization requires no observation parameters. The corresponding variables are therefore
% empty.
%
% --------------------------------------------------------------------------------------------------
% Copyright (C) 2012-2013 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 = 'Bayes optimal categorical';
% Gather prior settings in vectors
c.priormus = [];
c.priorsas = [];
% Model filehandle
c.obs_fun = @tapas_bayes_optimal_categorical;
% This is the handle to a dummy function since there are no parameters to transform
c.transp_obs_fun = @tapas_bayes_optimal_categorical_transp;
return;