158 lines
11 KiB
TeX
158 lines
11 KiB
TeX
\hypertarget{classmoeo_v_f_a_s}{}\doxysection{moeo\+V\+F\+AS$<$ M $>$ Class Template Reference}
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\label{classmoeo_v_f_a_s}\index{moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}}
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Variable fitness assignment search (vfas)
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{\ttfamily \#include $<$moeo\+V\+F\+A\+S.\+h$>$}
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Inheritance diagram for moeo\+V\+F\+AS$<$ M $>$\+:
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\nopagebreak
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\begin{figure}[H]
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\begin{center}
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\leavevmode
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\includegraphics[width=350pt]{classmoeo_v_f_a_s__inherit__graph}
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\end{center}
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\end{figure}
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Collaboration diagram for moeo\+V\+F\+AS$<$ M $>$\+:
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\nopagebreak
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\begin{figure}[H]
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\begin{center}
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\leavevmode
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\includegraphics[width=350pt]{classmoeo_v_f_a_s__coll__graph}
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\end{center}
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\end{figure}
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\doxysubsection*{Public Types}
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\begin{DoxyCompactItemize}
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\item
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\mbox{\Hypertarget{classmoeo_v_f_a_s_afdb14f0628ccf97afc9da8b0c0cb6f1c}\label{classmoeo_v_f_a_s_afdb14f0628ccf97afc9da8b0c0cb6f1c}}
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typedef M\+::\+E\+O\+Type {\bfseries M\+O\+E\+OT}
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\item
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\mbox{\Hypertarget{classmoeo_v_f_a_s_a2cdbbaff2c6a600e01d50917fc7a5a4f}\label{classmoeo_v_f_a_s_a2cdbbaff2c6a600e01d50917fc7a5a4f}}
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typedef M\+O\+E\+O\+T\+::\+Objective\+Vector {\bfseries Objective\+Vector}
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\item
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\mbox{\Hypertarget{classmoeo_v_f_a_s_a805ecb7254b1bf02ba394d3ddd9a5ebc}\label{classmoeo_v_f_a_s_a805ecb7254b1bf02ba394d3ddd9a5ebc}}
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typedef M\+O\+E\+O\+T\+::\+Fitness {\bfseries Fitness}
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\end{DoxyCompactItemize}
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\doxysubsection*{Public Member Functions}
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\begin{DoxyCompactItemize}
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\item
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\mbox{\hyperlink{classmoeo_v_f_a_s_aeeec42003e4f849d5e08b34eeeff1c92}{moeo\+V\+F\+AS}} (\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&\+\_\+algorithm, \mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&\+\_\+continue, \mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&\+\_\+select, std\+::vector$<$ double $>$ \&\+\_\+weights, \mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&\+\_\+eval, \mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&\+\_\+wstrat)
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\item
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\mbox{\hyperlink{classmoeo_v_f_a_s_af33f4d5827ab32b45f0be9237f29a0ba}{moeo\+V\+F\+AS}} (\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&\+\_\+algorithm, \mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&\+\_\+continue, \mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&\+\_\+select, std\+::vector$<$ double $>$ \&\+\_\+weights, Objective\+Vector \&\+\_\+ref\+Point, \mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&\+\_\+eval, \mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&\+\_\+wstrat, \mbox{\hyperlink{classmoeo_variable_ref_point_strategy}{moeo\+Variable\+Ref\+Point\+Strategy}}$<$ M\+O\+E\+OT $>$ \&\+\_\+rstrat)
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\item
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\mbox{\hyperlink{classmoeo_v_f_a_s_a28a8a031ace5617cac14f30b32d0006d}{moeo\+V\+F\+AS}} (\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&\+\_\+algorithm, \mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&\+\_\+continue, \mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&\+\_\+select, \mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&\+\_\+eval, \mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&\+\_\+wstrat)
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\item
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virtual void \mbox{\hyperlink{classmoeo_v_f_a_s_a16dbf58e691d94895df34346faa97b2e}{operator()}} (\mbox{\hyperlink{classeo_pop}{eo\+Pop}}$<$ M\+O\+E\+OT $>$ \&\+\_\+pop)
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\end{DoxyCompactItemize}
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\doxysubsection*{Additional Inherited Members}
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\doxysubsection{Detailed Description}
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\subsubsection*{template$<$class M$>$\newline
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class moeo\+V\+F\+A\+S$<$ M $>$}
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Variable fitness assignment search (vfas)
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Search using multiple fitness assignment to search solution to a multi objective problem
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\doxysubsection{Constructor \& Destructor Documentation}
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\mbox{\Hypertarget{classmoeo_v_f_a_s_aeeec42003e4f849d5e08b34eeeff1c92}\label{classmoeo_v_f_a_s_aeeec42003e4f849d5e08b34eeeff1c92}}
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\index{moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}!moeoVFAS@{moeoVFAS}}
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\index{moeoVFAS@{moeoVFAS}!moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}}
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\doxysubsubsection{\texorpdfstring{moeoVFAS()}{moeoVFAS()}\hspace{0.1cm}{\footnotesize\ttfamily [1/3]}}
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{\footnotesize\ttfamily template$<$class M $>$ \\
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\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}}$<$ M $>$\+::\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}} (\begin{DoxyParamCaption}\item[{\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+algorithm, }\item[{\mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+continue, }\item[{\mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+select, }\item[{std\+::vector$<$ double $>$ \&}]{\+\_\+weights, }\item[{\mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+eval, }\item[{\mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+wstrat }\end{DoxyParamCaption})\hspace{0.3cm}{\ttfamily [inline]}}
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constructor using a mo\+Algo and a vector of weight take a base vector of weight, and modify it to relaunch the algo with a diferent fitness use a select\+One to determine which moeot should be the base for the algo launch use a \mbox{\hyperlink{classeo_pop}{eo\+Pop}} to keep result from each iteration
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\begin{DoxyParams}{Parameters}
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{\em \+\_\+algorithm} & The solution based heuristic to use. It should at least use the fitness value at some point. \\
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\hline
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{\em \+\_\+continue} & The stopping criterion. \\
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\hline
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{\em \+\_\+select} & a selector to choose on which moeot we use the algorithm \\
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\hline
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{\em \+\_\+weights} & a vector containing the base weights, which will be changed at each iteration. \\
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\hline
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{\em \+\_\+eval} & The evaluation function. \\
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\hline
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{\em \+\_\+wstrat} & the strategy to change weights (should be constructed with the same weights as the fitness) \\
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\hline
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\end{DoxyParams}
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\mbox{\Hypertarget{classmoeo_v_f_a_s_af33f4d5827ab32b45f0be9237f29a0ba}\label{classmoeo_v_f_a_s_af33f4d5827ab32b45f0be9237f29a0ba}}
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\index{moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}!moeoVFAS@{moeoVFAS}}
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\index{moeoVFAS@{moeoVFAS}!moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}}
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\doxysubsubsection{\texorpdfstring{moeoVFAS()}{moeoVFAS()}\hspace{0.1cm}{\footnotesize\ttfamily [2/3]}}
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{\footnotesize\ttfamily template$<$class M $>$ \\
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\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}}$<$ M $>$\+::\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}} (\begin{DoxyParamCaption}\item[{\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+algorithm, }\item[{\mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+continue, }\item[{\mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+select, }\item[{std\+::vector$<$ double $>$ \&}]{\+\_\+weights, }\item[{Objective\+Vector \&}]{\+\_\+ref\+Point, }\item[{\mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+eval, }\item[{\mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+wstrat, }\item[{\mbox{\hyperlink{classmoeo_variable_ref_point_strategy}{moeo\+Variable\+Ref\+Point\+Strategy}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+rstrat }\end{DoxyParamCaption})\hspace{0.3cm}{\ttfamily [inline]}}
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constructor using a mo\+Algo an Objective\+Vector and a vector of weight take a base vector of weight, and modify it to relaunch the algo with a diferent fitness use a select\+One to determine which moeot should be the base for the algo launch use a \mbox{\hyperlink{classeo_pop}{eo\+Pop}} to keep result from each iteration
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\begin{DoxyParams}{Parameters}
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{\em \+\_\+algorithm} & The solution based heuristic to use. It should at least use the fitness value at some point. \\
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\hline
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{\em \+\_\+continue} & The stopping criterion. \\
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\hline
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{\em \+\_\+select} & a selector to choose on which moeot we use the algorithm \\
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\hline
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{\em \+\_\+weights} & a vector containing the base weights, which will be changed at each iteration. \\
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\hline
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{\em \+\_\+ref\+Point} & a reference point changed at each iteration \\
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\hline
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{\em \+\_\+eval} & The evaluation function. \\
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\hline
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{\em \+\_\+wstrat} & the strategy to change weights (should be constructed with the same weights as the fitness) \\
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\hline
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{\em \+\_\+rstrat} & the strategy to change the reference point \\
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\hline
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\end{DoxyParams}
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\mbox{\Hypertarget{classmoeo_v_f_a_s_a28a8a031ace5617cac14f30b32d0006d}\label{classmoeo_v_f_a_s_a28a8a031ace5617cac14f30b32d0006d}}
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\index{moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}!moeoVFAS@{moeoVFAS}}
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\index{moeoVFAS@{moeoVFAS}!moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}}
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\doxysubsubsection{\texorpdfstring{moeoVFAS()}{moeoVFAS()}\hspace{0.1cm}{\footnotesize\ttfamily [3/3]}}
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{\footnotesize\ttfamily template$<$class M $>$ \\
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\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}}$<$ M $>$\+::\mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}} (\begin{DoxyParamCaption}\item[{\mbox{\hyperlink{classmoeo_sol_algo}{moeo\+Sol\+Algo}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+algorithm, }\item[{\mbox{\hyperlink{classeo_continue}{eo\+Continue}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+continue, }\item[{\mbox{\hyperlink{classmoeo_select_one}{moeo\+Select\+One}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+select, }\item[{\mbox{\hyperlink{classeo_eval_func}{eo\+Eval\+Func}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+eval, }\item[{\mbox{\hyperlink{classmoeo_variable_weight_strategy}{moeo\+Variable\+Weight\+Strategy}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+wstrat }\end{DoxyParamCaption})\hspace{0.3cm}{\ttfamily [inline]}}
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constructor without the weights
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\begin{DoxyParams}{Parameters}
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{\em \+\_\+algorithm} & The solution based heuristic to use. It should at least use the fitness value at some point. \\
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\hline
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{\em \+\_\+continue} & The stopping criterion. \\
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\hline
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{\em \+\_\+select} & a selector to choose on which moeot we use the algorithm \\
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\hline
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{\em \+\_\+eval} & The evaluation function. \\
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\hline
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{\em \+\_\+wstrat} & the strategy to change weights (should be constructed with the same weights as the fitness) \\
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\hline
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\end{DoxyParams}
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\doxysubsection{Member Function Documentation}
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\mbox{\Hypertarget{classmoeo_v_f_a_s_a16dbf58e691d94895df34346faa97b2e}\label{classmoeo_v_f_a_s_a16dbf58e691d94895df34346faa97b2e}}
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\index{moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}!operator()@{operator()}}
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\index{operator()@{operator()}!moeoVFAS$<$ M $>$@{moeoVFAS$<$ M $>$}}
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\doxysubsubsection{\texorpdfstring{operator()()}{operator()()}}
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{\footnotesize\ttfamily template$<$class M $>$ \\
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virtual void \mbox{\hyperlink{classmoeo_v_f_a_s}{moeo\+V\+F\+AS}}$<$ M $>$\+::operator() (\begin{DoxyParamCaption}\item[{\mbox{\hyperlink{classeo_pop}{eo\+Pop}}$<$ M\+O\+E\+OT $>$ \&}]{\+\_\+pop }\end{DoxyParamCaption})\hspace{0.3cm}{\ttfamily [inline]}, {\ttfamily [virtual]}}
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launch the algorithm
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\begin{DoxyParams}{Parameters}
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{\em \+\_\+pop} & the initial population on which algo will be launched \\
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\hline
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\end{DoxyParams}
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Implements \mbox{\hyperlink{classeo_u_f_a786e028409366dc273e19104f17ba68a}{eo\+U\+F$<$ eo\+Pop$<$ M\+::\+E\+O\+Type $>$ \&, void $>$}}.
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The documentation for this class was generated from the following file\+:\begin{DoxyCompactItemize}
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\item
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moeo/src/scalar\+Stuffs/algo/moeo\+V\+F\+A\+S.\+h\end{DoxyCompactItemize}
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