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I use naiveBayes e1071 for classifying my data set (Classification class: "V32" 0/1).

Here is what I do:

    d <- read.table("Modeling_Data.txt",header=FALSE,sep="\t",
                    comment.char="",quote="")
    #divide into training and test data 70:30
    trainingIndex <- createDataPartition(d$V32, p=.7, list=F)
    d.training <- d[trainingIndex,]
    d.testing <- d[-trainingIndex,]
    nb.classifier <- naiveBayes(as.factor(d$V32) ~ ., data = d.training)

But I get this error:

    Error in names(dimnames(tables[[i]])) <- c(Yname, colnames(x)[i]) : 
    attempt to set an attribute on NULL
    predict(nb.classifier,d.testing[,-50000])
    Error in predict(nb.classifier, d.testing[, -50000]) : 
    object 'nb.classifier' not found

I tried to use the included the data set (iris) and everything works fine. What's wrong with my approach?

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1 Answer 1

up vote 0 down vote accepted

Seems like building of the model failing (and as a result the classifier is not constructed). Without looking at your data, my best guess would be that you have incomplete cases.

You could try removing cases with missing data using complete.cases as follows.

d <- read.table("Modeling_Data.txt",header=FALSE,sep="\t",comment.char="",quote="")

# remove incomplete cases
d[complete.cases(d),]

# divide into training and test data 70:30
trainingIndex <- createDataPartition(d$V32, p=.7, list=F)
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