How can I classify a document into a relevance rating given a search term?
What I know is that with Bayesian Classifier (or other classifiers), one can train a dataset to elicit a binary (or multi-nary) classification to whether a document fits a class or not.
The problem is that the trained data set is fixated on feature set, usually static values. Question is, is it possible to train a data set that instead of using static values, uses dynamic values?
For example. If the trained dataset uses a feature of whether the document contains "like". can we change the "like" word to a dynamic word, but still reuse the data set?
What are some sources I can read up on such algorithms, as well as libraries/toolkits that already implement such an algo?