I have a table that has about 10000 entries each entry has almost 100 boolean values. A user checkboxes a bunch of the booleans and hopes to get a result that matches their request. If that record doesn't exist, I want to show them maybe 5 records that are close(have only 1 or two values different). Is there a good hash system or data structure that can help me find these results.
Bitmap indices. Google for the paper if you want the complete background, it's not easy but worth a read. Basically build bitmpas for your boolean values like this:
And then just XOR your filter through them, sort by number of matches, return. Since all operations are insanely fast (about one cycle per element, and the data structure uses (edit) 100 bits of memory per element), this will usually work even though it's linear. Addendum: How to XOR. (fixed a bug)
The two 1's tell you that there are 2 errors and m2 matches, where m is the number of bits. 


What you describe is a nearest neighbor search: based on a record, find the 5 closest records based on an arbitrary distance function (such as the number of different values). A hashing function intentionally discards any information except "these values are equal", so it's not really the way to go. Consider using instead a data structure optimized for nearest neighbor searching, such as a kdtree or vptree. If there's a high probability that a record already exists in the list, you could first use a hash table to look for it, and then fall back on the kdtree if it does not exist. 


This builds on the answer from Kdansky.
to find the hamming distance: xor and find the hamming weight http://en.wikipedia.org/wiki/Hamming_weight 

