Problem Statement is somewhat like this:
Given a website, we have to classify it into one of the two predefined classes (say whether its an e-commerce website or not?)
We have already tried Naive Bayes Algorithms for this with multiple pre-processing techniques (stop word removal, stemming etc.) and proper features.
We want to increase the accuracy to 90 or somewhat closer, which we are not getting from this approach.
The issue here is, while evaluating the accuracy manually, we look for a few identifiers on web page (e.g. Checkout button, Shop/Shopping,paypal and many more) which are sometimes missed in our algorithms.
We were thinking, if we are too sure of these identifiers, why don't we create a
rule based classifier where we will classify a page as per a set of rules(which will be written on the basis of some priority).
e.g. if it contains shop/shopping and has checkout button then it's an ecommerce page. And many similar rules in some priority order.
Depending on a few rules we will visit other pages of the website as well (currently, we visit only home page which is also a reason of not getting very high accuracy).
What are the potential issues that we will be facing with rule based approach? Or it would be better for our use case?
Would be a good idea to create those rules with sophisticated algorithms(e.g.
FOIL, AQ etc)?