Based on your comments, it sounds like there's a missed step in your ETL process.
For a call center / contact center, I might start out with a fact table like this:
CallFactID - unique key just for ETL purposes only
AssociateID - call center associate who initially took the call
ProductID - product that the user is calling about
CallTypeID - General, Complaint, Misc, etc
ClientID - company / individual that is calling
CallDateID - linked to your Date (by day) Dimension
CallTimeOfDayID - bucketed id for call time based on business rules
CallStartTimestamp - ANSI timestamp of start time
CallEndTimestamp - ANSI timestamp of end time
CallDurationTimestamp - INTERVAL data type, or integer in seconds, call duration
Your dimension tables would then be:
Your ETL will need to build the dimensions first. If you have a relational model in your source system, you would typically just go to the "lookup" tables for various things, such as the "Products" table or "Associates" table, and denormalize any relationships that make sense to be included as attributes. For example, a relational product table might look like:
You'd denormalize this into a general product dimension by looking up the product types and manufacturer to end up with something like:
PRODUCTDIM: PRODUCTID (DW surrogate key),
For attributes that are only on your transaction (call record) tables but are low cardinality, you can create dimensions by doing
SELECT DISTINCT on the these tables.
Once you have loaded all the dimensions, you then load the fact by doing a lookup against each of the dimensions based on the natural keys (which you've preserved in the dimension), and then assign that key to the fact row.
For a more detailed guide on ETL with DW Star Schemas, I highly recommend Ralph Kimball's book The Data Warehouse ETL Toolkit.