My understanding of what you're asking is that if you have a field in Schema 1 like Customer.Country, that has values in it "United States", "Canada" and "Mexico", you want a list of all columns in Schema 2 that have the values "United States", "Canada" and "Mexico". Sound right?
Based on my understanding of what you're asking, it could largely depend on what kind of mapping has been done and how complicated it is. Here's some examples, based on some schema change projects I've seen:
Unioning: If Schema 1 had Shoe_Customers and Boot_Customers and Schema 2 joined them into one Customers table, then finding the map for Shoe_Customers.Customer_Name would have to look for a subset of values in Customers.Name. Similarly, if Schema 1's Customers.Country had been replaced with a Countries generic look up table in Schema 2, and someone populated that table with a full list of countries, then you'd be looking for a subset to match Customers.Country and Countries.Name (or, are they matches?).
Subsetting: Taking the opposite approach, if Schema 1 had Customers and Schema 2 broke that into Shoe_Customers and Boot_Customers, then you're only going to find a subset of Schema 1 values in any given column of Schema 2. I'm not sure how you'd define a success case here.
Cardinality: If you're trying to track down fairly unique data, like Customer.Name, then you have a pretty high chance of success with an automated approach. Anything with a low level of cardinality is likely to give you more false leads than you'd find worth it. If Gender is M or F, and Discount_Code is A-Z as is Sole_Style and Heel_Style etc..., then tracking this data down through automated data matching is going to be a massive waste of time. This will get worse with numeric data, especially low cardinality data like percentages.
Data type changes: I'm guessing you're asking this because it involves hundreds or thousands of column changes, with large quantities of data. If the idea is to compare all "string data" to all other "string data", and all "numeric data" to all other "numeric data", then this is going to be massive. If the schema change excluded data type changes (e.g. not allowing: Customer.Country was varchar(15) but now Countries.Name is varchar(50)), then you've got a leg up on the task.
These are the things that are coming to mind at the moment. Your situation may make all of these factors irrelevant, or your situation may have these factors as just the tip of the iceberg. Personally, I'm a little skeptical of a fully automated approach for most situations. My suggestion would be to write a stored procedure that takes two table/column names, one from each schema, and will tell you what coverage of Schema 1 values there is in Schema 2, coverage of Schema 2 values in Schema 1, some kind of cardinality measurements, etc.... Combined with a little human influence, you should be able to some proportion of your columns mapped, probably in less time than a full blown generic solution with lots of dead-ends to pursue.