I think one independent variables is so importance and primary that I want to use only it to build a model and use rest of other variables to build other models.
Such as in Titanic competition on kaggle.com,
sex as a primary variables, and I used it to build a SVM model.
Then I used rest of other variables such as
age to build a cforest model.
But to predict
survival, I need both of them.
So how can i do so?
lm() function seems not to apply to
My code here:
## Modeling Begin predictions <- NULL NT <- 1000 ## formula3 for 'gender' model using SVM formula3 <- as.factor(survived) ~ pclass + sex ## formula1 and formula2 both for rest features without gender model formula1.cf <- as.formula(as.factor(survived) ~ pclass + alone + fare + age) formula2.cf <- as.formula( survived ~ pclass + alone + fare + age) ## Train SVM(only for gender model) and Predict library(e1071) formula3 <- as.factor(survived) ~ pclass + sex tune <- tune.svm(formula3, data=clean.train, gamma=10^(-4:-1), cost=10^(1:4)) # summary(tune) tune$best.parameters model.svm <- svm(formula3, data=clean.train, type="C-classification", kernel="radial", probability=T, gamma=tune$best.parameters$gamma, cost=tune$best.parameters$cost) ## Train cForest model.cforest <- cforest(formula2.cf, data=clean.train, control=cforest_unbiased(ntree=NT, trace=F))