\section{PF Class Reference} \label{classPF}\index{PF@{PF}} Trivial particle filter with proposal density equal to parameter evolution model. {\tt \#include $<$libPF.h$>$} Inheritance diagram for PF:\nopagebreak \begin{figure}[H] \begin{center} \leavevmode \includegraphics[width=62pt]{classPF__inherit__graph} \end{center} \end{figure} Collaboration diagram for PF:\nopagebreak \begin{figure}[H] \begin{center} \leavevmode \includegraphics[width=92pt]{classPF__coll__graph} \end{center} \end{figure} \subsection*{Public Member Functions} \begin{CompactItemize} \item {\bf PF} (const {\bf RV} \&rv0, {\bf mpdf} \&par0, {\bf mpdf} \&obs0, int n0)\label{classPF_e99f0d866721405dd281e315ecb690aa} \begin{CompactList}\small\item\em Default constructor. \item\end{CompactList}\item void {\bf set\_\-est} (const {\bf epdf} \&epdf0)\label{classPF_04d38fbcc0348b558212f530d9ec183e} \begin{CompactList}\small\item\em Set posterior density by sampling from epdf0. \item\end{CompactList}\item void {\bf bayes} (const vec \&dt) \begin{CompactList}\small\item\em Incremental Bayes rule. \item\end{CompactList}\item void {\bf bayes} (mat Dt)\label{classBM_87b07867fd4c133aa89a18543f68d9f9} \begin{CompactList}\small\item\em Batch Bayes rule (columns of Dt are observations). \item\end{CompactList}\item virtual {\bf epdf} \& {\bf \_\-epdf} ()=0\label{classBM_3dc45554556926bde996a267636abe55} \begin{CompactList}\small\item\em Returns a pointer to the \doxyref{epdf}{p.}{classepdf} representing posterior density on parameters. Use with care! \item\end{CompactList}\item const {\bf RV} \& {\bf \_\-rv} () const \label{classBM_126bd2595c48e311fc2a7ab72876092a} \begin{CompactList}\small\item\em access function \item\end{CompactList}\item double {\bf \_\-ll} () const \label{classBM_87f4a547d2c29180be88175e5eab9c88} \begin{CompactList}\small\item\em access function \item\end{CompactList}\end{CompactItemize} \subsection*{Protected Attributes} \begin{CompactItemize} \item int {\bf n}\label{classPF_2c2f44ed7a4eaa42e07bdb58d503f280} \begin{CompactList}\small\item\em number of particles; \item\end{CompactList}\item {\bf eEmp} {\bf est}\label{classPF_1a0a09e309da997f63ae8e30d1e9806b} \begin{CompactList}\small\item\em posterior density \item\end{CompactList}\item vec \& {\bf \_\-w}\label{classPF_5c87aba508df321ff26536ced64dbb3a} \begin{CompactList}\small\item\em pointer into {\tt \doxyref{eEmp}{p.}{classeEmp}} \item\end{CompactList}\item Array$<$ vec $>$ \& {\bf \_\-samples}\label{classPF_cf7dad75e31215780a746c30e71ad9c5} \begin{CompactList}\small\item\em pointer into {\tt \doxyref{eEmp}{p.}{classeEmp}} \item\end{CompactList}\item {\bf mpdf} \& {\bf par}\label{classPF_d92ac103f88f8c21e197e90af5695a09} \begin{CompactList}\small\item\em Parameter evolution model. \item\end{CompactList}\item {\bf mpdf} \& {\bf obs}\label{classPF_dd0a687a4515333d6809147335854e77} \begin{CompactList}\small\item\em Observation model. \item\end{CompactList}\item {\bf RV} {\bf rv}\label{classBM_af00f0612fabe66241dd507188cdbf88} \begin{CompactList}\small\item\em Random variable of the posterior. \item\end{CompactList}\item double {\bf ll}\label{classBM_5623fef6572a08c2b53b8c87b82dc979} \begin{CompactList}\small\item\em Logarithm of marginalized data likelihood. \item\end{CompactList}\item bool {\bf evalll}\label{classBM_bf6fb59b30141074f8ee1e2f43d03129} \begin{CompactList}\small\item\em If true, the filter will compute likelihood of the data record and store it in {\tt ll} . Set to false if you want to save time. \item\end{CompactList}\end{CompactItemize} \subsection{Detailed Description} Trivial particle filter with proposal density equal to parameter evolution model. Posterior density is represented by a weighted empirical density ({\tt \doxyref{eEmp}{p.}{classeEmp}} ). \subsection{Member Function Documentation} \index{PF@{PF}!bayes@{bayes}} \index{bayes@{bayes}!PF@{PF}} \subsubsection[bayes]{\setlength{\rightskip}{0pt plus 5cm}void PF::bayes (const vec \& {\em dt})\hspace{0.3cm}{\tt [virtual]}}\label{classPF_64f636bbd63bea9efd778214e6b631d3} Incremental Bayes rule. \begin{Desc} \item[Parameters:] \begin{description} \item[{\em dt}]vector of input data \end{description} \end{Desc} Implements {\bf BM} \doxyref{}{p.}{classBM_a892eff438aab2dd1a9e2efcb7fb5bdf}. Reimplemented in {\bf MPF$<$ BM\_\-T $>$} \doxyref{}{p.}{classMPF_55daf8e4b6553dd9f47c692de7931623}. References \_\-samples, \_\-w, est, mpdf::evalcond(), n, obs, par, eEmp::resample(), and mpdf::samplecond(). The documentation for this class was generated from the following files:\begin{CompactItemize} \item work/git/mixpp/bdm/estim/{\bf libPF.h}\item work/git/mixpp/bdm/estim/libPF.cpp\end{CompactItemize}