I am solving a classification problem using Random Forests. For that I have decided to use Python library scikit-learn. But I am new to both Random Forest algorithm and this tool. My data contains many factor variables. I googled for that and found out that it's not right to give numerical values to factor variables like we do in linear regression, as it will treat it as continuous variable and give wrong result. But I could not find anything about how to deal with factor variables in scikit-learn. Please tell me the options to use or point me to some document where I can get it.
You should use the sklearn's OneHotEncoder. What it does is create a new variable for each distinct value in your categorical integer feature.
So for example if you have variable