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model.m
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model.m
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classdef model < handle
% MODEL represents an interface for a model.
%
% MODEL Methods:
% GET_M - returns the result of the model function with
% model parameters P and experimental design X.
% GET_DP_M - returns the first derivative of the model function with
% model parameters P and experimental design X.
% GET_DPDP_M - returns the second derivative of the model function with
% model parameters P and experimental design X.
%{
---------------------------------------------------------------------------
Copyright (C) 2010-2017 Joscha Reimer jor@informatik.uni-kiel.de
This file is part of the Optimal Experimental Design Toolbox.
The Optimal Experimental Design Toolbox is free software: you can redistribute
it and/or modify it under the terms of the GNU General Public License
as published by the Free Software Foundation, either version 3 of the
License, or (at your option) any later version.
The Optimal Experimental Design Toolbox is distributed in the hope that it will
be useful, but WITHOUT ANY WARRANTY; without even the implied warranty
of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
GNU General Public License for more details.
You should have received a copy of the GNU General Public License
along with the Optimal Experimental Design Toolbox. If not, see
<http://www.gnu.org/licenses/>.
---------------------------------------------------------------------------
%}
properties
end
methods (Abstract)
M = get_M(this, p, x)
% GET_M returns the result of the model function with model parameters P and experimental design X.
%
% Example:
% M = MODEL_OBJECT.GET_M(P, X)
%
% Input:
% P: the model parameter values
% X: the experimental design values
%
% Output:
% M: the result of the model function with model parameters P and experimental design X
%
dp_M = get_dp_M(this, p, x)
% GET_DP_M returns the first derivative of the model function with model parameters P and experimental design X.
%
% Example:
% M = MODEL_OBJECT.GET_DP_M(P, X)
%
% Input:
% P: the model parameter values
% X: the experimental design values
%
% Output:
% M: the first derivative of the model function with model parameters P and experimental design X
%
dpdp_M = get_dpdp_M(this, p, x)
% GET_DPDP_M returns the second derivative of the model function with model parameters P and experimental design X.
%
% Example:
% M = MODEL_OBJECT.GET_DPDP_M(P, X)
%
% Input:
% P: the model parameter values
% X: the experimental design values
%
% Output:
% M: the second derivative of the model function with model parameters P and experimental design X
%
end
end