ACMx |
Estimation of Autoregressive Conditional Mean Models |
backTAR |
Backtest for Univariate TAR Models |
backtest |
Backtest |
clutterKF |
Kalman Filter for Tracking in Clutter |
cvlm |
Check linear models with cross validation |
est_cfar |
Estimation of a CFAR Process |
est_cfarh |
Estimation of a CFAR Process with Heteroscedasticity and Irregualar Observation Locations |
F.test |
F Test for Nonlinearity |
F_test_cfar |
F Test for a CFAR Process |
F_test_cfarh |
F Test for a CFAR Process with Heteroscedasticity and Irregular Observation Locations |
g_cfar |
Generate a CFAR Process |
g_cfar1 |
Generate a CFAR(1) Process |
g_cfar2 |
Generate a CFAR(2) Process |
g_cfar2h |
Generate a CFAR(2) Process with Heteroscedasticity and Irregular Observation Locations |
hfDummy |
Create Dummy Variables for High-Frequency Intraday Seasonality |
MKF.Full.RB |
Full Information Propagation Step under Mixture Kalman Filter |
MKFstep.fading |
One Propagation Step under Mixture Kalman Filter for Fading Channels |
MSM.fit |
Fitting Univariate Autoregressive Markov Switching Models |
MSM.sim |
Generate Univariate 2-regime Markov Switching Models |
mTAR |
Estimation of a Multivariate Two-Regime SETAR Model |
mTAR.est |
Estimation of Multivariate TAR Models |
mTAR.pred |
Prediction of A Fitted Multivariate TAR Model |
mTAR.sim |
Generate Two-Regime (TAR) Models |
NNsetting |
Setting Up The Predictor Matrix in A Neural Network for Time Series Data |
PRnd |
ND Test |
p_cfar |
Prediction of CFAR Processes |
p_cfar_part |
Partial Curve Prediction of CFAR Processes |
rankQ |
Rank-Based Portmanteau Tests |
rcAR |
Estimating of Random-Coefficient AR Models |
ref.mTAR |
Refine A Fitted 2-Regime Multivariate TAR Model |
simPassiveSonar |
Simulate A Sample Trajectory |
simuTargetClutter |
Simulate A Moving Target in Clutter |
simu_fading |
Simulate Signals from A System with Rayleigh Flat-Fading Channels |
SISstep.fading |
Sequential Importance Sampling Step for Fading Channels |
SMC |
Generic Sequential Monte Carlo Method |
SMC.Full |
Generic Sequential Monte Carlo Using Full Information Proposal Distribution |
SMC.Full.RB |
Generic Sequential Monte Carlo Using Full Information Proposal Distribution and Rao-Blackwellization |
SMC.Smooth |
Generic Sequential Monte Carlo Smoothing with Marginal Weights |
Sstep.Clutter |
Sequential Monte Carlo for A Moving Target under Clutter Environment |
Sstep.Clutter.Full |
Sequential Importance Sampling under Clutter Environment |
Sstep.Clutter.Full.RB |
Sequential Importance Sampling under Clutter Environment |
Sstep.Smooth.Sonar |
Sequential Importance Sampling for A Target with Passive Sonar |
Sstep.Sonar |
Sequential Importance Sampling Step for A Target with Passive Sonar |
thr.test |
Threshold Nonlinearity Test |
Tsay |
Tsay Test for Nonlinearity |
tvAR |
Estimate Time-Varying Coefficient AR Models |
tvARFiSm |
Filtering and Smoothing for Time-Varying AR Models |
uTAR |
Estimation of a Univariate Two-Regime SETAR Model |
uTAR.est |
General Estimation of TAR Models |
uTAR.pred |
Prediction of A Fitted Univariate TAR Model |
uTAR.sim |
Generate Univariate SETAR Models |
wrap.SMC |
Sequential Monte Carlo Using Sequential Importance Sampling for Stochastic Volatility Models |