First, you need to understand how an index on a column works. In simple words it is nothing but,
an ordered list of all possible values in the given column with a pointer back to the actual record in the database.
Since it is ordered, a binary search can be used against it, rather than a linear search, which improves performance over a large dataset.
Imagine then, your index as a phone book ordered by a column, say
last name; but within the set of records with a similar
last name, there isn't a common pattern or meaningful order for the records: they are ordered purely random. And say we need to search this record:
Ike Smith 4783 Random Ave. Seattle, WA 98117
Since the phone book is ordered by
last name, we need only to go to the
S, then the
m, then the
i, etc. until we find
Smith. And (hopefully) there are only a couple of records under
Smith so we find the one we want fairly quickly.
Now, imagine you have a phone book ordered by
city instead of
last name. And within the records that match a given
city there is no particular order. And so we try our search again. However, once we find
Seattle (using a extremely sophisticated binary search) we are left with close to 620,778 records, which we have to check sequentially as they ordered completely random. We're stuck checking every single entry for the record we want.
This is what happens when you use a very common column as the base of your index: the binary search returns a very large set of possible records with which the database can't make any assumptions beyond the initial indexed column values, so it needs to check sequentially within the resulting set for a matching record.
If the phone book were instead ordered by
zip code (a less common variable), then you might find yourself only searching for 18,623 records residing on
Furthermore, a true phone book usually resembles a composite index: instead of just ordering by a single column (i.e.
last name), the values within the resulting set are then ordered by another column (say
first name), and then another (
middle name?) so the search can be done sub linearly at every step until you find the record needed. It it basically an index within an index, where even if the first column is not that common, the combination with the second one provides a specific enough criteria that only a small set of records need to be search linearly.