Peter-Heinz Fox
2009-May-05 13:41 UTC
[R] Stepwise logistic Regression with significance testing - stepAIC
Hello R-Users, I have one binary dependent variable and a set of independent variables (glm(formula,…,family=”binomial”) ) and I am using the function stepAIC (“MASS”) for choosing an optimal model. However I am not sure if stepAIC considers significance properties like Likelihood ratio test and Wald test (see example below).> y <- rbinom(30,1,0.4) > x1 <- rnorm(30) > x2 <- rnorm(30) > x3 <- rnorm(30) > xdata <- data.frame(x1,x2,x3) > > fit1 <- glm(y~ . ,family="binomial",data=xdata) > stepAIC(fit1,trace=FALSE)Call: glm(formula = y ~ x3, family = "binomial", data = xdata) Coefficients: (Intercept) x3 -0.3556 0.8404 Degrees of Freedom: 29 Total (i.e. Null); 28 Residual Null Deviance: 40.38 Residual Deviance: 37.86 AIC: 41.86> > fit <- glm( stepAIC(fit1,trace=FALSE)$formula ,family="binomial") > my.summ <- summary(fit) > # Wald Test > print(my.summ$coeff[,4])(Intercept) x3 0.3609638 0.1395215> > my.anova <- anova(fit,test="Chisq") > #LR Test > print(my.anova$P[2])[1] 0.1121783>Is there an alternative function or a possible way of checking if the added variable and the new model are significant within the regression steps? Thanks in advance for your help Regards Peter-Heinz Fox [[alternative HTML version deleted]]
Peter-Heinz Fox
2009-May-05 14:02 UTC
[R] Stepwise logistic regression with significance testing - stepAIC
Hello R-Users, I have one binary dependent variable and a set of independent variables (glm(formula,…,family=”binomial”) ) and I am using the function stepAIC (“MASS”) for choosing an optimal model. However I am not sure if stepAIC considers significance properties like Likelihood ratio test and Wald test (see example below).> y <- rbinom(30,1,0.4) > x1 <- rnorm(30) > x2 <- rnorm(30) > x3 <- rnorm(30) > xdata <- data.frame(x1,x2,x3) > > fit1 <- glm(y~ . ,family="binomial",data=xdata) > stepAIC(fit1,trace=FALSE)Call: glm(formula = y ~ x3, family = "binomial", data = xdata) Coefficients: (Intercept) x3 -0.3556 0.8404 Degrees of Freedom: 29 Total (i.e. Null); 28 Residual Null Deviance: 40.38 Residual Deviance: 37.86 AIC: 41.86> > fit <- glm( stepAIC(fit1,trace=FALSE)$formula ,family="binomial") > my.summ <- summary(fit) > # Wald Test > print(my.summ$coeff[,4])(Intercept) x3 0.3609638 0.1395215> > my.anova <- anova(fit,test="Chisq") > #LR Test > print(my.anova$P[2])[1] 0.1121783>Is there an alternative function or a possible way of checking if the added variable and the new model are significant within the regression steps? Thanks in advance for your help Regards Peter-Heinz Fox [[alternative HTML version deleted]]
Peter-Heinz Fox
2009-May-05 14:51 UTC
[R] Stepwise logistic regression with significance testing - stepAIC
Hello R-Users, I have one binary dependent variable and a set of independent variables (glm(formula,…,family=”binomial”) ) and I am using the function stepAIC (“MASS”) for choosing an optimal model. However I am not sure if stepAIC considers significance properties like Likelihood ratio test and Wald test (see example below).> y <- rbinom(30,1,0.4) > x1 <- rnorm(30) > x2 <- rnorm(30) > x3 <- rnorm(30) > xdata <- data.frame(x1,x2,x3) > > fit1 <- glm(y~ . ,family="binomial",data=xdata) > stepAIC(fit1,trace=FALSE)Call: glm(formula = y ~ x3, family = "binomial", data = xdata) Coefficients: (Intercept) x3 -0.3556 0.8404 Degrees of Freedom: 29 Total (i.e. Null); 28 Residual Null Deviance: 40.38 Residual Deviance: 37.86 AIC: 41.86> > fit <- glm( stepAIC(fit1,trace=FALSE)$formula ,family="binomial") > my.summ <- summary(fit) > # Wald Test > print(my.summ$coeff[,4])(Intercept) x3 0.3609638 0.1395215> > my.anova <- anova(fit,test="Chisq") > #LR Test > print(my.anova$P[2])[1] 0.1121783>Is there an alternative function or a possible way of checking if the added variable and the new model are significant within the regression steps? Thanks in advance for your help Regards Peter-Heinz Fox [[alternative HTML version deleted]]
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