Traditional database design teaches that a Many:Many relationship should be devolved to two 1:Many relationships with a table in-between.
M:M = 1:M, M:1
Usually, unless the amount of data you are dealing with is immense, it can be best to normalize your database schema - it helps prevent update anomalies, Cartesian joins, and all that nasty stuff that us database designers hope to avoid.
That said, the Kimball data warehouse design method sometimes applies the star or snowflake schema, where data will be 'flaked' off into a type of mini-database. This is the type of thing that a database architect would design for an OLAP system (business analytics). I know that almost every large-scale business sytem I have worked with runs on a snowflake or star schema. For scale, we are talking 1GB plus - so it doesn't have to be huge, but beyond Microsoft Access size.
Database normalization: http://en.wikipedia.org/wiki/Database_normalization
Database normalization (About.com): http://databases.about.com/od/specificproducts/a/normalization.htm
Kimball Group's Data Warehouse archive: http://www.kimballgroup.com/html/articles.html
The Kimball archive has some good guides about the how and when to create a warehouse.
Edit: In order to determine when you need to use a table to join two tables on the database, you can develop the database schema. This is the typical way that you lay out the design before you start coding. Developing a database schema can be a lot of work - in my program, it was taught as part of the Database Design coursework. I have added a few links for you to look at, and you may want to look up database-design here on Stack Overflow to get a greater idea. Of specific note is the Microsoft tutorial, which is pretty nice. Even if you aren't using Microsoft SQL Server, the tutorial can be helpful.
Database Schema: http://en.wikipedia.org/wiki/Database_schema
Microsoft Database Schema Tutorial: http://msdn.microsoft.com/en-gb/express/bb403186.aspx