I have around 10,000 text documents.
How to represent them as feature vectors, so that I can use them for text classification?
Is there any tool which does the feature vector representation automatically?
The easiest approach is to go with the bag of words model. You represent each document as an unordered collection of words.
You probably want to strip out punctuation and you may want to ignore case. You might also want to remove common words like 'and', 'or' and 'the'.
To adapt this into a feature vector you could choose (say) 10,000 representative words from your sample, and have a binary vector