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I am very new to coding in R, and cannot understand what is going wrong here. Any help will be much appreciated.

data.train <- read.table("Assign2.WineComplete.csv",sep=",",header=T)
# Building decision tree
Train <- data.frame(residual.sugar=data.train$residual.sugar,
Pre <- as.formula("pre ~ quality")

fit <- rpart(Pre, method="class",data=Train)

I am getting the following error : Error in eval(expr, envir, enclos) : object 'pre' not found

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You don't need the second or third lines of your code. Just do the read.table line then do: fit <- rpart(pre ~ quality, method="class",data=data.train). – Thomas Oct 19 '13 at 6:45
I tried what you asked me to do, but I still get the same error – Rads Oct 19 '13 at 7:12
Is there a upper/lower case problem here? I see 'Pre' declared but error is about 'pre'. – ako Oct 19 '13 at 7:31
No, if instead of all the statements, i just write data.train <- read.table("Assign2.WineComplete.csv",sep=",",header=T) and then fit <- rpart(pre ~ quality, method="class",data=data.train) , i get the same error – Rads Oct 19 '13 at 7:36

Don't know why @Janos deleted his answer, but it's correct: your data frame Train doesn't have a column named pre. When you pass a formula and a data frame to a model-fitting function, the names in the formula have to refer to columns in the data frame. Your Train has columns called residual.sugar, total.sulfur, alcohol and quality. You need to change either your formula or your data frame so they're consistent with each other.

And just to clarify: Pre is an object containing a formula. That formula contains a reference to the variable pre. It's the latter that has to be consistent with the data frame.

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Well.. I mistakenly deleted his post while trying to edit my comment.. sorry about that @Janos.. i get what you say.. but when building a decision tree using rpart, can you please tell me how the formula should be, the decision tree has to be made only the column "quality". I tried to use the example in R :: fit <- rpart(Kyphosis ~ Age + Number + Start, data = kyphosis) – Rads Oct 19 '13 at 8:39
To use rpart, you need a dependent variable: something that is to be predicted or estimated using the independent variables. Which of those in your data frame is the dependent? – Hong Ooi Oct 19 '13 at 8:46
up vote -1 down vote accepted

I think I got what I was looking for..

data.train <- read.table("Assign2.WineComplete.csv",sep=",",header=T)
fit <- rpart(quality ~ ., method="class",data=data.train)
text(fit, use.n=TRUE)
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