#include <arx.h>
Public Member Functions | |
void | set_statistics (const BMEF *BM0) |
Set sufficient statistics. | |
void | from_setting (const Setting &set) |
virtual string | to_string () |
This method returns a basic info about the current instance. | |
virtual void | to_setting (Setting &set) const |
This method save all the instance properties into the Setting structure. | |
virtual void | validate () |
This method TODO. | |
Constructors | |
ARX (const double frg0=1.0) | |
ARX (const ARX &A0) | |
ARX * | _copy_ () const |
Flatten the posterior as if to keep nu0 data. | |
void | set_parameters (double frg0) |
void | set_statistics (int dimx0, const ldmat V0, double nu0=-1.0) |
Mathematical operations | |
void | bayes (const vec &dt, const double w) |
Weighted Bayes . | |
void | bayes (const vec &dt) |
Incremental Bayes rule. | |
double | logpred (const vec &dt) const |
void | flatten (const BMEF *B) |
Flatten the posterior according to the given BMEF (of the same type!). | |
enorm< ldmat > * | epredictor (const vec &rgr) const |
Conditioned version of the predictor. | |
enorm< ldmat > * | epredictor () const |
Predictor for empty regressor. | |
mlnorm< ldmat > * | predictor () const |
conditional version of the predictor | |
mlstudent * | predictor_student () const |
ivec | structure_est (egiw Eg0) |
Brute force structure estimation. | |
Access attributes | |
const egiw * | _e () const |
const egiw & | posterior () const |
Connection | |
void | set_drv (const RV &drv0) |
RV & | get_yrv () |
Mathematical operations | |
virtual void | bayesB (const mat &Dt) |
Batch Bayes rule (columns of Dt are observations). | |
vec | logpred_m (const mat &dt) const |
Matrix version of logpred. | |
Access to attributes | |
const RV & | _drv () const |
void | set_rv (const RV &rv) |
double | _ll () const |
void | set_evalll (bool evl0) |
Protected Attributes | |
int | dimx |
size of output variable (needed in regressors) | |
RV | _yrv |
egiw | est |
Posterior estimate of in the form of Normal-inverse Wishart density. | |
ldmat & | V |
cached value of est.V | |
double & | nu |
cached value of est.nu | |
double | frg |
forgetting factor | |
double | last_lognc |
cached value of lognc() in the previous step (used in evaluation of ll ) | |
RV | drv |
Random variable of the data (optional). | |
double | ll |
Logarithm of marginalized data likelihood. | |
bool | evalll |
If true, the filter will compute likelihood of the data record and store it in ll . Set to false if you want to save computational time. | |
Extension to conditional BM | |
This extension is useful e.g. in Marginalized Particle Filter (bdm::MPF). Alternatively, it can be used for automated connection to DS when the condition is observed | |
const RV & | _rvc () const |
access function | |
virtual void | condition (const vec &val) |
Substitute val for rvc . | |
RV | rvc |
Name of extension variable. | |
Logging of results | |
virtual void | set_options (const string &opt) |
Set boolean options from a string recognized are: "logbounds,logll". | |
virtual void | log_add (logger &L, const string &name="") |
Add all logged variables to a logger. | |
virtual void | logit (logger &L) |
ivec | LIDs |
IDs of storages in loggers 4:[1=mean,2=lb,3=ub,4=ll]. | |
ivec | LFlags |
Flags for logging - same size as LIDs, each entry correspond to the same in LIDs. |
Regression of the following kind:
where unknown parameters rv
are , regression vector is a known function of past outputs and exogeneous variables . Distrubances are supposed to be normally distributed:
See Theory of ARX model estimation for mathematical treatment.
The easiest way how to use the class is:
#include "estim/arx.h" using namespace bdm; // estimation of AR(0) model int main() { //prior mat V0 = 0.00001*eye(2); V0(0,0)= 0.1; // ARX Ar; Ar.set_statistics(1, V0); //nu is default (set to have finite moments) // forgetting is default: 1.0 mat Data = concat_vertical( randn(1,100), ones(1,100) ); Ar.bayesB( Data); cout << "Expected value of Theta is: " << Ar.posterior().mean() <<endl; }
void bdm::ARX::bayes | ( | const vec & | dt | ) | [inline, virtual] |
void bdm::ARX::from_setting | ( | const Setting & | set | ) | [virtual] |
The ARX is constructed from a structure with fields:
estimator = { type = "ARX"; y = {type="rv", ...} // description of output variables rgr = {type="rv", ...} // description of regressor variables constant = true; // boolean switch if the constant term is modelled or not //optional fields dV0 = [1e-3, 1e-5, 1e-5, 1e-5]; // default: 1e-3 for y, 1e-5 for rgr nu0 = 6; // default: rgrlen + 2 frg = 1.0; // forgetting, default frg=1.0 };
The estimator will assign names of the posterior in the form ["theta_i" and "r_i"]
Reimplemented from bdm::root.
References bdm::RV::_dsize(), bdm::BMEF::frg, and bdm::UI::get().
double bdm::ARX::logpred | ( | const vec & | dt | ) | const [virtual] |
Evaluates predictive log-likelihood of the given data record I.e. marginal likelihood of the data with the posterior integrated out.
Reimplemented from bdm::BM.
References bdm::egiw::_nu(), bdm::egiw::_V(), est, bdm::BM::evalll, bdm::BMEF::frg, bdm::BMEF::last_lognc, bdm::egiw::lognc(), nu, ldmat::opupdt(), bdm::egiw::pow(), and V.
conditional version of the predictor
<----------- TODO
Reimplemented from bdm::BM.
References bdm::epdf::dimension(), est, bdm::egiw::mean_mat(), ldmat::rows(), bdm::mlnorm< sq_T >::set_parameters(), and V.
ivec bdm::ARX::structure_est | ( | egiw | Eg0 | ) |
Brute force structure estimation.
References bdm::epdf::dimension(), est, and bdm::egiw::lognc().
RV bdm::ARX::_yrv [protected] |
description of modelled data in the likelihood function Do NOT access directly, only via get_yrv()
.