library(wooldridge)
data(hprice1)
head(force(hprice1),n=5)
## price assess bdrms lotsize sqrft colonial lprice lassess llotsize lsqrft
## 1 300 349.1 4 6126 2438 1 5.703783 5.855359 8.720297 7.798934
## 2 370 351.5 3 9903 2076 1 5.913503 5.862210 9.200593 7.638198
## 3 191 217.7 3 5200 1374 0 5.252274 5.383118 8.556414 7.225482
## 4 195 231.8 3 4600 1448 1 5.273000 5.445875 8.433811 7.277938
## 5 373 319.1 4 6095 2514 1 5.921578 5.765504 8.715224 7.829630
Estime el modelo : price = ˆα + ˆα1(lotsize) + ˆα2(sqrft) +
ˆα3(bdrms) + ε.
library(stargazer)
modelo_estimado<-lm(price~lotsize+sqrft+bdrms,data = hprice1)
stargazer(modelo_estimado,type = "html",title = "modelo estimado")
modelo estimado
|
|
|
|
Dependent variable:
|
|
|
|
|
|
price
|
|
|
|
lotsize
|
0.002***
|
|
|
(0.001)
|
|
|
|
|
sqrft
|
0.123***
|
|
|
(0.013)
|
|
|
|
|
bdrms
|
13.853
|
|
|
(9.010)
|
|
|
|
|
Constant
|
-21.770
|
|
|
(29.475)
|
|
|
|
|
|
|
Observations
|
88
|
|
R2
|
0.672
|
|
Adjusted R2
|
0.661
|
|
Residual Std. Error
|
59.833 (df = 84)
|
|
F Statistic
|
57.460*** (df = 3; 84)
|
|
|
|
Note:
|
p<0.1; p<0.05;
p<0.01
|
- Verifique si hay evidencia de la independencia de los regresores (no
colinealidad), a través de:
- Indíce de condición y prueba de FG, presente sus resultados de
manera tabular en ambos casos y para la prueba de FG presente también
sus resultados de forma gráfica usando la librería fastGraph.
Cálculo “Manual”:
library(stargazer)
X_mat<-model.matrix(modelo_estimado)
stargazer(head(X_mat,n=6),type = "html")
|
|
|
|
(Intercept)
|
lotsize
|
sqrft
|
bdrms
|
|
|
|
1
|
1
|
6,126
|
2,438
|
4
|
|
2
|
1
|
9,903
|
2,076
|
3
|
|
3
|
1
|
5,200
|
1,374
|
3
|
|
4
|
1
|
4,600
|
1,448
|
3
|
|
5
|
1
|
6,095
|
2,514
|
4
|
|
6
|
1
|
8,566
|
2,754
|
5
|
|
|
XX_matrix<-t(X_mat)%*%X_mat
stargazer(XX_matrix,type = "html")
|
|
|
|
(Intercept)
|
lotsize
|
sqrft
|
bdrms
|
|
|
|
(Intercept)
|
88
|
793,748
|
177,205
|
314
|
|
lotsize
|
793,748
|
16,165,159,010
|
1,692,290,257
|
2,933,767
|
|
sqrft
|
177,205
|
1,692,290,257
|
385,820,561
|
654,755
|
|
bdrms
|
314
|
2,933,767
|
654,755
|
1,182
|
|
|
library(stargazer)
options(scipen = 999)
Sn<- solve(diag(sqrt(diag(XX_matrix))))
stargazer(Sn,type = "html")
|
|
|
0.107
|
0
|
0
|
0
|
|
0
|
0.00001
|
0
|
0
|
|
0
|
0
|
0.0001
|
0
|
|
0
|
0
|
0
|
0.029
|
|
|
library(stargazer)
XX_norm<-(Sn%*%XX_matrix)%*%Sn
stargazer(XX_norm,type = "html",digits = 4)
|
|
|
1
|
0.6655
|
0.9617
|
0.9736
|
|
0.6655
|
1
|
0.6776
|
0.6712
|
|
0.9617
|
0.6776
|
1
|
0.9696
|
|
0.9736
|
0.6712
|
0.9696
|
1
|
|
|
library(stargazer)
#autovalores
lambdas<-eigen(XX_norm,symmetric = TRUE)
stargazer(lambdas$values,type = "html")
K<-sqrt(max(lambdas$values)/min(lambdas$values))
print(K)
## [1] 11.86778
se concluye que la multicolinealidad no se considera un problema, por
lo siguiente: k(x) < 20.
Cálculo del Indíce de Condición usando librería
“mctest”.
library(mctest)
X_mat<-model.matrix(modelo_estimado)
mctest(mod = modelo_estimado)
##
## Call:
## omcdiag(mod = mod, Inter = TRUE, detr = detr, red = red, conf = conf,
## theil = theil, cn = cn)
##
##
## Overall Multicollinearity Diagnostics
##
## MC Results detection
## Determinant |X'X|: 0.6918 0
## Farrar Chi-Square: 31.3812 1
## Red Indicator: 0.3341 0
## Sum of Lambda Inverse: 3.8525 0
## Theil's Method: -0.7297 0
## Condition Number: 11.8678 0
##
## 1 --> COLLINEARITY is detected by the test
## 0 --> COLLINEARITY is not detected by the test
library(olsrr)
ols_eigen_cindex(model = modelo_estimado)
## Eigenvalue Condition Index intercept lotsize sqrft bdrms
## 1 3.48158596 1.000000 0.003663034 0.0277802824 0.004156293 0.002939554
## 2 0.45518380 2.765637 0.006800735 0.9670803174 0.006067321 0.005096396
## 3 0.03851083 9.508174 0.472581427 0.0051085488 0.816079307 0.016938178
## 4 0.02471941 11.867781 0.516954804 0.0000308514 0.173697079 0.975025872
Prueba de Farrar - Glaubar.
Cálculo “Manual”
Cálculo de |R|
library(stargazer)
Zn<-scale(X_mat[,-1])
stargazer(head(Zn,n=6),type = "html")
|
|
|
|
lotsize
|
sqrft
|
bdrms
|
|
|
|
1
|
-0.284
|
0.735
|
0.513
|
|
2
|
0.087
|
0.108
|
-0.675
|
|
3
|
-0.375
|
-1.108
|
-0.675
|
|
4
|
-0.434
|
-0.980
|
-0.675
|
|
5
|
-0.287
|
0.867
|
0.513
|
|
6
|
-0.045
|
1.283
|
1.702
|
|
|
Calcular la matriz R.
library(stargazer)
n<-nrow(Zn)
R<-(t(Zn)%*%Zn)*(1/(n-1))
stargazer(R,type = "html",digits = 4)
|
|
|
|
lotsize
|
sqrft
|
bdrms
|
|
|
|
lotsize
|
1
|
0.1838
|
0.1363
|
|
sqrft
|
0.1838
|
1
|
0.5315
|
|
bdrms
|
0.1363
|
0.5315
|
1
|
|
|
determinante_R<-det(R)
print(determinante_R)
## [1] 0.6917931
Aplicando la prueba de Farrer Glaubar (Bartlett).
m<-ncol(X_mat[,-1])
n<-nrow(X_mat[,-1])
chi_FG<--(n-1-(2*m+5)/6)*log(determinante_R)
print(chi_FG)
## [1] 31.38122
Valor Crítico.
gl<-m*(m-1)/2
VC<-qchisq(p=0.95,df = gl)
print(VC)
## [1] 7.814728
Regla de desición. En base a la Regla de decisión concluimos con lo
siguiente: se rechaza
, por lo tanto hay evidencia de colinealidad
en los regresores.
Cálculo de FG usando “mctest”.
library(mctest)
mctest::omcdiag(mod = modelo_estimado)
##
## Call:
## mctest::omcdiag(mod = modelo_estimado)
##
##
## Overall Multicollinearity Diagnostics
##
## MC Results detection
## Determinant |X'X|: 0.6918 0
## Farrar Chi-Square: 31.3812 1
## Red Indicator: 0.3341 0
## Sum of Lambda Inverse: 3.8525 0
## Theil's Method: -0.7297 0
## Condition Number: 11.8678 0
##
## 1 --> COLLINEARITY is detected by the test
## 0 --> COLLINEARITY is not detected by the test
Se muestra la grafica
library(fastGraph)
alpha_sig<-0.05
chi_FG<--(n-1-(2*m+5)/6)*log(determinante_R)
GL<-gl
vc<-qchisq(1-alpha_sig,gl,lower.tail=TRUE)
shadeDist(chi_FG,ddist = "dchisq",
parm1 = gl,
lower.tail = FALSE, xmin = 0,
sub=paste("VC:",round(VC,2),"","chi_FG:",round(chi_FG,2)))

Cálculo de FG usando la “psych”.
library(psych)
FG_test<-cortest.bartlett(X_mat[,-1])
print(FG_test)
## $chisq
## [1] 31.38122
##
## $p.value
## [1] 0.0000007065806
##
## $df
## [1] 3
Gráfica.
chi_FG<--(n-1-(2*m+5)/6)*log(determinante_R)
gl<-m*(m-1)/2
vc<-qchisq(p = 0.95,df = gl)
alpha_sig <- 0.05
library(fastGraph)
shadeDist(chi_FG, ddist = "dchisq", parm1 = gl, lower.tail = FALSE, xmin = 0, xlab = "Valor de chi-cuadrado",
main = "Prueba de Bartlett")
abline(v = vc, col = "red", lty = 2)
axis(1, at = vc, labels = paste("vc:", round(vc, 2)), col.axis = "black", las = 1)
if (chi_FG > vc) {
text(x = vc + 0, y = 0.22, labels = "Rechazar H0", col = "blue", cex = 0.8)
} else {
text(x = vc + 0, y = 0.22, labels = "No rechazar H0", col = "blue", cex = 0.8)
}
text(vc, 0, expression(alpha == 0.05), pos = 4, col = "black", cex = 0.8)

Cálculo manual:
Matriz de Correlación de los regresores del modelo (Como se obtuvo
con anterioridad):
## lotsize sqrft bdrms
## lotsize 1.0000000 0.1838422 0.1363256
## sqrft 0.1838422 1.0000000 0.5314736
## bdrms 0.1363256 0.5314736 1.0000000
Inversa de la matriz de correlación
inversa_R<-solve(R)
print(inversa_R)
## lotsize sqrft bdrms
## lotsize 1.03721145 -0.1610145 -0.05582352
## sqrft -0.16101454 1.4186543 -0.73202696
## bdrms -0.05582352 -0.7320270 1.39666321
VIF’s para el modelo estimado:
VIFs<-diag(inversa_R)
print(VIFs)
## lotsize sqrft bdrms
## 1.037211 1.418654 1.396663
Cálculo de los VIF’s usando “mctest”
library(mctest)
mc.plot(mod = modelo_estimado,vif = 2)
