Has anyone attempted prediction using support vector regression?
I'm using LIBSVM I'm not sure how to use SVR in both univariate and multivariate time series
Say we have stock prices for N days. For training inputs, y is the stock prices for N days, but what will we use for x?
a-)Time series? For i.e. in one step ahead prediction 1,2,3...Z for Z days?
b-) (for one step ahead) sifting one day of y values?
To explain more:
matlab> model = svmtrain(training_label_vector,training_instance_matrix [, 'libsvm_options']);
For univariate:I use the stock prices for N days in "training_label_vector" as a column vector and want to predict say next 30 days. I wonder which data i have to use in "training_instance_matrix"?
For multivariate: say I have 22 more features (prices of other goodies), I use other features as column vectors in "training_instance_matrix". But I'm not sure if I use the correct approach?