I'm trying to prepare a dataset for scikit learn, planning to build pandas dataframe to feed it to a decision tree classifier.
The data represents different companies with varying criteria, but some criteria can have multiple values - such as "Customer segment" - which, for any given company, could be any, or all of: SMB, midmarket, enterprise, etc. There are other criteria/columns like this with multiple possible values. I need decisions made upon individual values, not the aggregate - so company A for SMB, company A for Midmarket, and not for the "grouping" of customer A for SMB AND midmarket.
Is there guidance on how to handle this? Do I need to generate rows for every variant for a given company to be fed into the learning routine? Such that an input of:
A, SMB A, MM A, ENT
As well as for any other variants that may come from additional criteria/columns - for example "customer vertical" which could also include multiple values? It seems like this will greatly increase the dataset size. Is there a better way to structure this data and/or handle this scenario?
My ultimate goal is to let users complete a short survey with simple questions, and map their responses to values to get a prediction of the "right" company, for a given segment, vertical, product category, etc. But I'm struggling to build the right learning dataset to accomplish that.