Preciso verificar o percentual de vezes que AIC e BIC escolhem
o verdadeiro modelo. Para tanto, terá que realizar um experimento de Monte Carlo.
Especificamente, devem ser gerados 1000 processos AR(2) e ARMA(1,1). Os
resultados de cada modelo devem ser comparados com os de modelos alternativos.
Para facilitar, utilize os seguintes modelos alternativos para comparar comparar com
o AR(2): ARMA(2,1), ARMA(1,1), AR(1,0), ARMA(1,2). Para comparar com o
ARMA(1,1), considere as seguintes possibilidades: ARMA(1,0), ARMA(2,0),
ARMA(0,2) e ARMA(1,2). O número de observações do processo yt
é igual a 500.
rep=200
nmodels=5
#Inicializa matrizes para armazenar informações.
aic.ar2=matrix(,nrow=rep,ncol=nmodels)
bic.ar2=matrix(,nrow=rep,ncol=nmodels)
aic.arma11=matrix(,nrow=rep,ncol=nmodels)
bic.arma11=matrix(,nrow=rep,ncol=nmodels)
colnames(aic.ar2)<-c("ar2","arma(2,1)","arma(1,1)","ar1","arma(1,2)")
colnames(aic.arma11)<-c("arma(1,1)","arma(1,0)","arma(2,0)","arma(0,2)","arma(1,2)")
#II. Loop
#i) Gera uma sequência de AR(2) e uma de ARMA(1,1).
for (t in 1: rep){
y.ar=arima.sim(list(ar=c(0.4,-0.3)),n=190)
y.arma=arima.sim(list(order=c(1,0,1),ar=0.7, ma=.5),n=190)
#ii) Estimar AR(2) e modelos para comparar com AR(2)
mod1=arima(y.ar,order=c(2,0,0))
mod2=arima(y.ar,order=c(2,0,1))
mod3=arima(y.ar,order=c(1,0,1))
mod4=arima(y.ar,order=c(1,0,0))
mod5=arima(y.ar,order=c(1,0,2))
#i2) Estimar ARMA(1,1) e modelos para comparar com ARMA(1,1)
mod1a=arima(y.arma,order=c(1,0,1))
mod2a=arima(y.arma,order=c(1,0,0))
mod3a=arima(y.arma,order=c(2,0,0))
mod4a=arima(y.arma,order=c(0,0,2))
mod5a=arima(y.arma,order=c(1,0,2))
#iii) Guardar os valores do AIC
aic=c(mod1$aic,mod2$aic,mod3$aic,mod4$aic,mod5$aic)
aic.ar2[rep, 1:nmodels] = aic
bic1=AIC(mod1,k=log(length(y.ar)))
bic2=AIC(mod2,k=log(length(y.ar)))
bic3=AIC(mod3,k=log(length(y.ar)))
bic4=AIC(mod4,k=log(length(y.ar)))
bic5=AIC(mod5,k=log(length(y.ar)))
bic.ar2[rep,1:nmodels]=c(bic1,bic2,bic3,bic4,bic5)
aic=c(mod1a$aic,mod2a$aic,mod3a$aic,mod4a$aic,mod5a$aic)
aic.arma11[rep,1:nmodels] = aic
bic1a=AIC(mod1a,k=log(length(y.arma)))
bic2a=AIC(mod2a,k=log(length(y.arma)))
bic3a=AIC(mod3a,k=log(length(y.arma)))
bic4a=AIC(mod4a,k=log(length(y.arma)))
bic5a=AIC(mod5a,k=log(length(y.arma)))
bic.arma11[rep,1:nmodels]=c(bic1a,bic2a,bic3a,bic4a,bic5a)
} #fecha loop
#III. Comparação
min.aic.ar2=1:rep
min.bic.ar2=1:rep
min.aic.arma11=1:rep
min.bic.arma11=1:rep
for (t in 1:rep){
min.aic.ar2[t]=which(aic.ar2[t,]==min(aic.ar2[t,]))
min.aic.arma11[t]=which(aic.arma11[t,]==min(aic.arma11[t,]))
min.bic.ar2[t]=which(bic.ar2[t,]==min(bic.ar2[t,]))
min.bic.arma11[t]=which(bic.arma11[t,]==min(bic.arma11[t,]))
}
best.aic.ar2=matrix(0,ncol=5,nrow=1)
best.bic.ar2=matrix(0,ncol=5,nrow=1)
colnames(best.aic.ar2)<-c("ar2"," arma(2,1)"," arma(1,1)"," ar1"," arma(1,2)")
colnames(best.bic.ar2)<-c("ar2"," arma(2,1)"," arma(1,1)"," ar1"," arma(1,2)")
best.aic.arma11=matrix(0,ncol=5,nrow=1)
best.bic.arma11=matrix(0,ncol=5,nrow=1)
colnames(best.aic.arma11)<-c("arma(1,1)","arma(1,0)","arma(2,0)","arma(0,2)","arma(1,2)")
colnames(best.bic.arma11)<-c("arma(1,1)","arma(1,0)","arma(2,0)","arma(0,2)","arma(1,2)")
for (i in 1:nmodels){
best.aic.ar2[,i]=length(which(min.aic.ar2==i))
best.bic.ar2[,i]=length(which(min.bic.ar2==i))
best.aic.arma11[,i]=length(which(min.aic.arma11==i))
best.bic.arma11[,i]=length(which(min.bic.arma11==i))
}
Está dando o seguinte erro:
Error in min.aic.ar2[t] = which(aic.ar2[t, ] == min(aic.ar2[t, ])) :
replacement has zero length
Como corrigir este erro?
<-
para definição de objetos ao invés do símbolo de igual e procure utilizar as funções da família*apply
ao invés de tantos for loops.