I'm trying to determine the ideal number of samples and instances of data that I should collect. Basically, I have to create a dataset of network traffic.
I'm not sure how the number of samples and instances in each sample influences the training data. Is it a large number of samples good? Then, should I try to collect as many instances as possible?
My idea was to collect two different samples in different days. Then for each program/protocol in each samples I would collect around 30 instances.
And I will be using the SVM algorithm.
Thanks for your help, and any clarification. And, I'm also not sure if I'm confusing definitions (samples vs instances).