Es posible hacerlo. La utilización de paste
es justamente la solución. ¿Qué debelos lograr? Una función de la estructura respuesta ~ predictor
o y ~ x
, por lo que se configura la sintaxis de paste
para que obtenga la estructura necesaria de la función:
Para el ejemplo por defecto de la función selm
library(sn)
data(ais)
m1 <- selm(log(Fe) ~ BMI + LBM, family="SN", data=ais)
print(m1)
Object class: selm
Call: selm(formula = log(Fe) ~ BMI + LBM, family = "SN", data = ais)
Number of observations: 202
Number of covariates: 3 (includes constant term)
Number of parameters: 5
Family: SN
Estimation method: MLE
Log-likelihood: -175.9094
summary(m1)
Call: selm(formula = log(Fe) ~ BMI + LBM, family = "SN", data = ais)
Number of observations: 202
Family: SN
Estimation method: MLE
Log-likelihood: -175.9094
Parameter type: CP
CP residuals:
Min 1Q Median 3Q Max
-2.01862 -0.39918 0.03332 0.40744 1.33000
Regression coefficients
estimate std.err z-ratio Pr{>|z|}
(Intercept.CP) 2.736823 0.337376 8.112094 0.000
BMI 0.035270 0.020760 1.698934 0.089
LBM 0.009465 0.004467 2.118964 0.034
Parameters of the SEC random component
estimate std.err
s.d. 0.5796 0.029
Lo que buscas realizar con los datos del ejemplo anterior:
test <- ais[,3:13] # sólo seleccionar numéricas, omitiendo factores
formula <- paste(paste(names(test),collapse = " + "),"~ 1")
formula
"RCC + WCC + Hc + Hg + Fe + BMI + SSF + Bfat + LBM + Ht + Wt ~ 1"
m2 <- selm(formula, family="SN", data=test)
print(m2)
Object class: selm
Call: selm(formula = formula, family = "SN", data = test)
Number of observations: 202
Number of covariates: 1 (includes constant term)
Number of parameters: 3
Family: SN
Estimation method: MLE
Log-likelihood: -1156.785
summary(m2)
Call: selm(formula = formula, family = "SN", data = test)
Number of observations: 202
Family: SN
Estimation method: MLE
Log-likelihood: -1156.785
Parameter type: CP
CP residuals:
Min 1Q Median 3Q Max
-172.60 -54.05 -5.21 46.49 234.87
Regression coefficients
estimate std.err z-ratio Pr{>|z|}
mean 571.55 5.34 107.03 0
Parameters of the SEC random component
estimate std.err
s.d. 75.9946 4.124
gamma1 0.5229 0.160
Edición
Revisé el comentario hecho y concuerdo plenamente con los resultados. Pero, eso no significa que el problema no tenga solución. Para ello me basé nuevamente en un ejemplo del paquete, para que pueda ser reproducible:
# Método propuesto en el problema
data(wines)
m28 <- selm(cbind(chloride, glycerol, magnesium) ~ 1, family="ST", data=wines)
extractSECdistr(m28)
Probability distribution of variable 'Fitted SEC distribution of m28'
Skew-elliptically contoured distribution of 3-dimensional family ST
Direct parameters:
chloride glycerol magnesium
xi 45.8538776 9.0046044 85.1582507
Omega[chloride,] 830.7641445 -5.7125572 154.9040524
Omega[glycerol,] -5.7125572 2.0858837 0.7838259
Omega[magnesium,] 154.9040524 0.7838259 292.9647575
alpha 0.5458764 -0.7599728 3.5628470
nu = 4.739759
# Primera solución
m28b <- selm(chloride + glycerol + magnesium ~ 1, family="ST", data=wines)
extractSECdistr(m28b)
Probability distribution of variable 'Fitted SEC distribution of m28b'
Skew-elliptically contoured distribution of univariate family ST
Direct parameters:
xi omega alpha nu
133.207120 41.408826 2.019968 3.900137
# Bueno, recurrimos nuevamente a paste con las variables mencionadas anteriormente
variables <- names(wines)[c(15,24,13)]
formula2 <- paste("cbind(", paste(variables,collapse = ", "),") ~ 1")
m28c <- selm(formula2, family="ST", data=wines)
extractSECdistr(m28c)
Probability distribution of variable 'Fitted SEC distribution of m28c'
Skew-elliptically contoured distribution of 3-dimensional family ST
Direct parameters:
chloride glycerol magnesium
xi 45.8538776 9.0046044 85.1582507
Omega[chloride,] 830.7641445 -5.7125572 154.9040524
Omega[glycerol,] -5.7125572 2.0858837 0.7838259
Omega[magnesium,] 154.9040524 0.7838259 292.9647575
alpha 0.5458764 -0.7599728 3.5628470
nu = 4.739759