View source: R/midas_functions.R
DAGM_X_loglik_no_skew | R Documentation |
Obtains the log-likelihood of the DAGM-X, according to two errors' conditional distributions: Normal and Student-t. For details, see \insertCiteamendola_candila_gallo:2019;textualrumidas.
DAGM_X_loglik_no_skew(
param,
daily_ret,
X,
mv_m,
K,
distribution,
lag_fun = "Beta"
)
param |
Vector of starting values. |
daily_ret |
Daily returns, which must be an "xts" object. |
X |
Additional "X" variable, which must be an "xts" object. Morever, "X" must be observed for the same days of daily_ret. |
mv_m |
MIDAS variable already transformed into a matrix, through |
K |
Number of (lagged) realizations of the MIDAS variable to consider. |
distribution |
The conditional density to use for the innovations. At the moment, valid choices are "norm" and "std", for the Normal and Student-t distributions. |
lag_fun |
optional. Lag function to use. Valid choices are "Beta" (by default) and "Almon", for the Beta and Exponential Almon lag functions, respectively. |
The resulting vector is the log-likelihood value for each i,t
.
mv_into_mat
.
# conditional density of the innovations: normal
start_val<-c(0.01,0.80,0.05,0,0,1.1,0,1.1)
r_t<-sp500['2005/2010']
X<-rv5['2005/2010']^0.5
mv_m<-mv_into_mat(r_t,diff(indpro),K=12,"monthly")
sum(DAGM_X_loglik_no_skew(start_val,r_t,X,mv_m,K=12,distribution="norm"))
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