I have a situation that seems trivial but I can't figure it out. I have a dataset in Matlab that has categorical values. For example:
Outlook,Temperature,Humidity,Windy,Play sunny,hot,high,false,no sunny,hot,high,true,no overcast,hot,high,false,yes rainy,mild,high,false,yes rainy,cool,normal,false,yes rainy,cool,normal,true,no overcast,cool,normal,true,yes
In order to use ClassificationTree (or other algorithm in machine learning), I need to convert the dataset to a matrix. I use (assuming that data contains the dataset):
which assigns numbers to the values. Let's say rainy=1, overcast=2, sunny=3 and so on. I train the ClassificationTree and it works fine. But here is my problem. If I want to predict on test data:
I need to know the numbers that double() assigned to each of the categories. i.e. overcast=2. Using double() on the test set does not work because there is no guarantee that the numbers assigned by double() are the same to those assigned to the training dataset.
I have found a really twisted way of doing it. For example, for Outlook:
d = zeros(size(test)); ls = getlevels(training.Outlook); n = size(ls,2); for i = 1:n d(test.Outlook == ls(i),1) = i; end
Which assigns the numbers correctly because I check against each of the values for Outlook that I found in the training dataset. This is far from elegant, and there has to be something better.
Any help is appreciated.