I am working on Question Classification Using SVM. Almost my research work is over but now i have to implement the system. I am using LIBSVM, library for SVM. My main problem is how to convert data into libsvm format
http://lekshmideepu.blogspot.in/2012/02/libsvm-tutorial.html In this link, it has been very clearly explained about how to convert data that too with example
But my training Dataset is like this
DESC:manner How did serfdom develop in and then leave Russia ? ENTY:cremat What films featured the character Popeye Doyle ? DESC:manner How can I find a list of celebrities ' real names ? ENTY:animal What fowl grabs the spotlight after the Chinese Year of the Monkey ?
class index value(question) DESC manner How did serfdom develop in and then leave Russia ?
likewise i have 6 class, 50 index and 1000 question
i have given numeric value to class and index for value(question) ... the above link says
"value - The data for training. Usually lots of real (floating point) numbers.
Why value, value2, ...?
The reason is usually the input data to the problem you were trying to solve involves lots of 'features' or say 'attributes', so the input will be a set (or say vector/array)."
so i have extracted features from question
MY QUESTION NOW IS WHERE TO BRING FLOATING POINT NUMBERS??? HOW TO PRESENT THESE FEATURES IN NUMERICAL FORM AND AM I GOING RIGHT.