function c = tapas_softmax_config
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%
% Contains the configuration for the softmax observation model for multinomial responses
%
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%
%
% --------------------------------------------------------------------------------------------------
% Copyright (C) 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 <http://www.gnu.org/licenses/>.

% Config structure
c = struct;

% Is the decision based on predictions or posteriors? Comment as appropriate.
c.predorpost = 1; % Predictions
%c.predorpost = 2; % Posteriors

% Model name
c.model = 'softmax';

% Sufficient statistics of Gaussian parameter priors

% Beta
c.logbemu = log(1);
c.logbesa = 4^2;

% Gather prior settings in vectors
c.priormus = [
    c.logbemu,...
         ];

c.priorsas = [
    c.logbesa,...
         ];

% Model filehandle
c.obs_fun = @tapas_softmax;

% Handle to function that transforms observation parameters to their native space
% from the space they are estimated in
c.transp_obs_fun = @tapas_softmax_transp;

return;