We use PeopleSoft. It uses joins against self referencing trees in order to implement row level query security. This is accomplished using nested sets. As you can picture, the leaf nodes return only one row, while further up the tree, it returns a long list. This is skewed data with a large number of the rows being the one row returned. Unfortunately, most of the items used from the tree are actually the large sets returned. Since this is a nested set, it is always a range query, never an equal query. Oracle's histograms, from what I read, are only applied to equality conditions.
This causes very inefficient query plans, using the "merge join Cartesian" plan for sets of thousands of rows. The join to the tree is implemented as a delivered view, so all of the attempts I have made at cardinality hints have failed.
Is there a way that any of you know to help it to better estimate cardinality, so that it will make a reasonable query plan?