0

Hi I'm using libsvm (in VS2010) for training my data , I scaled the input and output data successfully using svm-scale.c and my data is ready to be trained ...

Now I have two problems:

1).

as I've read from LIBSVM documentation I realized that first I need to train my scaled data and obtain a model. then use this model for predicting the final result but the problem is when I want to train my system I don't know what is the best choose for my model parameters and specifically (C,g) for training my data !!!. what I do is that first I load my scaled data, then by using a svm_problem I fill svm_nodes with my train data then call this function :

struct svm_model *svm_train(const struct svm_problem *prob, const struct svm_parameter *param);

2). Also I'm not sure about the correct function calling of libsvm functions -> I mean I first use svm_train and then svm_predict to see the result , and I don't know if I should call sth else or not ?!

Model = svm_train(My_data,My_param); //I don't know how to fill my_param

svm_node Test_Vector = svm_scale_data(x); //using the same algorithm as scaled_training data

double result = svm_predict(Model,Test_Vector);

Thanks

1
  • I realized that using cross validation I can get the best c,gamma as grid.py do in python interface .... If somebody knows sth about this too I'd appreciated that .... – PsP May 17 '13 at 12:49
1

If you want to call LIBSVM via C++, you can optimize parameters by letting LIBSVM do cross-validation internally. When doing so, you just need to loop over the parameter tuples (C, gamma) you want to test and let LIBSVM perform cross-validation instead of proper training.

You can get LIBSVM to perform cross-validation with the following API function:

void svm_cross_validation(const struct svm_problem *prob, const struct svm_parameter *param, int nr_fold, double *target);

To answer your other question: yes, it is perfectly fine to call svm_train() followed by svm_predict().

2
  • sorry but can you please explain more about the meaning of internal optimization ? you mean I should call svm_train() and this function itself optimizes it's parameters internally ?!!! can you provide a pseudo code for a whole operation (from training and getting the best parameters to test the new samples and see the result ?) – PsP May 17 '13 at 17:49
  • Parameter optimization is always up to the user. You can use the provided cross-validation API function to test the efficacy of a given parameter tuple. You must implement a grid search method yourself (e.g. iterate over several values of C+gamma and test which one is best using svm_cross_validation). – Marc Claesen May 17 '13 at 18:59

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.