[172] | 1 | \hypertarget{libBM_8h}{ |
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[145] | 2 | \section{work/git/mixpp/bdm/stat/libBM.h File Reference} |
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| 3 | \label{libBM_8h}\index{work/git/mixpp/bdm/stat/libBM.h@{work/git/mixpp/bdm/stat/libBM.h}} |
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[172] | 4 | } |
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[3] | 5 | Bayesian Models (bm) that use Bayes rule to learn from observations. |
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| 6 | |
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| 7 | {\tt \#include $<$itpp/itbase.h$>$}\par |
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[19] | 8 | |
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| 9 | |
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| 10 | Include dependency graph for libBM.h:\nopagebreak |
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| 11 | \begin{figure}[H] |
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| 12 | \begin{center} |
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| 13 | \leavevmode |
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[145] | 14 | \includegraphics[width=106pt]{libBM_8h__incl} |
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[19] | 15 | \end{center} |
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| 16 | \end{figure} |
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| 17 | |
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| 18 | |
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| 19 | This graph shows which files directly or indirectly include this file:\nopagebreak |
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| 20 | \begin{figure}[H] |
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| 21 | \begin{center} |
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| 22 | \leavevmode |
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[106] | 23 | \includegraphics[width=420pt]{libBM_8h__dep__incl} |
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[19] | 24 | \end{center} |
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| 25 | \end{figure} |
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[3] | 26 | \subsection*{Classes} |
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| 27 | \begin{CompactItemize} |
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| 28 | \item |
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[172] | 29 | class \hyperlink{classstr}{str} |
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[181] | 30 | \begin{CompactList}\small\item\em Structure of \hyperlink{classRV}{RV} (used internally), i.e. expanded RVs. \item\end{CompactList}\item |
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[172] | 31 | class \hyperlink{classRV}{RV} |
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[4] | 32 | \begin{CompactList}\small\item\em Class representing variables, most often random variables. \item\end{CompactList}\item |
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[172] | 33 | class \hyperlink{classfnc}{fnc} |
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[91] | 34 | \begin{CompactList}\small\item\em Class representing function $f(x)$ of variable $x$ represented by {\tt rv}. \item\end{CompactList}\item |
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[172] | 35 | class \hyperlink{classepdf}{epdf} |
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[4] | 36 | \begin{CompactList}\small\item\em Probability density function with numerical statistics, e.g. posterior density. \item\end{CompactList}\item |
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[172] | 37 | class \hyperlink{classmpdf}{mpdf} |
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[19] | 38 | \begin{CompactList}\small\item\em Conditional probability density, e.g. modeling some dependencies. \item\end{CompactList}\item |
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[172] | 39 | class \hyperlink{classmepdf}{mepdf} |
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| 40 | \begin{CompactList}\small\item\em Unconditional \hyperlink{classmpdf}{mpdf}, allows using \hyperlink{classepdf}{epdf} in the role of \hyperlink{classmpdf}{mpdf}. \item\end{CompactList}\item |
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[180] | 41 | class \hyperlink{classcompositepdf}{compositepdf} |
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| 42 | \begin{CompactList}\small\item\em Abstract composition of pdfs, a base for specific classes. \item\end{CompactList}\item |
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[172] | 43 | class \hyperlink{classDS}{DS} |
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[32] | 44 | \begin{CompactList}\small\item\em Abstract class for discrete-time sources of data. \item\end{CompactList}\item |
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[172] | 45 | class \hyperlink{classBM}{BM} |
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[32] | 46 | \begin{CompactList}\small\item\em Bayesian Model of the world, i.e. all uncertainty is modeled by probabilities. \item\end{CompactList}\item |
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[172] | 47 | class \hyperlink{classBMcond}{BMcond} |
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[32] | 48 | \begin{CompactList}\small\item\em Conditional Bayesian Filter. \item\end{CompactList}\end{CompactItemize} |
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[162] | 49 | \subsection*{Functions} |
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| 50 | \begin{CompactItemize} |
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| 51 | \item |
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[172] | 52 | \hypertarget{libBM_8h_33c114e83980d883c5b211c47d5322a4}{ |
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| 53 | \hyperlink{classRV}{RV} \hyperlink{libBM_8h_33c114e83980d883c5b211c47d5322a4}{concat} (const \hyperlink{classRV}{RV} \&rv1, const \hyperlink{classRV}{RV} \&rv2)} |
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| 54 | \label{libBM_8h_33c114e83980d883c5b211c47d5322a4} |
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[3] | 55 | |
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[162] | 56 | \begin{CompactList}\small\item\em Concat two random variables. \item\end{CompactList}\end{CompactItemize} |
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[3] | 57 | |
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[162] | 58 | |
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[3] | 59 | \subsection{Detailed Description} |
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| 60 | Bayesian Models (bm) that use Bayes rule to learn from observations. |
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| 61 | |
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| 62 | \begin{Desc} |
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| 63 | \item[Author:]Vaclav Smidl.\end{Desc} |
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| 64 | ----------------------------------- BDM++ - C++ library for Bayesian Decision Making under Uncertainty |
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| 65 | |
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| 66 | Using IT++ for numerical operations ----------------------------------- |
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