I'm attempting to infer errors occuring on a customer account using the apriori algorithm. So I have an error table like so:
error_id error_code cust_id 1 M015 100 2 M020 101 3 M016 100 4 M019 100 5 M015 102
And I want to establish what errors to expect given M015.
(e.g. M015 -> ??)
The problem is the error table contains hundreds of thousands of line items, and there are hundreds of possible error codes. So do I run my algorithm with a really low confidence to get back as many possible rules as possible? Or do I narrow down the errors database to only include "transactions" that include an error I'm interested in?
(In this example for instance, if I'm looking for rules M015, should I restrict the transactions table to only line items for cust_id 100 and 102?)