I'm currently working on implementing a fuzzy search for a terminology web service and I'm looking for suggestions on how I might improve the current implementation. It's too much code to share, but I think an explanation might suffice to prompt thoughtful suggestions. I realize it's a lot to read but I'd appreciate any help.
First, the terminology is basically just a number of names (or terms). For each word, we split it into tokens by space and then iterate through each character to add it to the trie. On a terminal node (such as when the character y in strawberry is reached) we store in a list an index to the master term list. So a terminal node can have multiple indices (since the terminal node for strawberry will match 'strawberry' and 'allergy to strawberry').
As for the actual search, the search query is also broken up into tokens by space. The search algorithm is run for each token. The first character of the search token must be a match (so traw will never match strawberry). After that, we go through children of each successive node. If there is child with a character that matches, we continue the search with the next character of the search token. If a child does not match the given character, we look at the children using the current character of the search token (so not advancing it). This is the fuzziness part, so 'stwb' will match 'strawberry'.
When we reach the end of the search token, we will search through the rest of the trie structure at that node to get all potential matches (since the indexes to the master term list are only on the terminal nodes). We call this the roll up. We store the indices by setting their value on a BitSet. Then, we simply and the BitSets from the results of each search token result. We then take, say, the first 1000 or 5000 indices from the anded BitSets and find the actual terms they correspond to. We use Levenshtein to score each term and then sort by score to get our final results.
This works fairly well and is pretty fast. There are over 390k nodes in the tree and over 1.1 million actual term names. However, there are problems with this as it stands.
For example, searching for 'car cat' will return Catheterization, when we don't want it to (since the search query is two words, the result should be at least two). That would be easy enough to check, but it doesn't take care of a situation like Catheterization Procedure, since it is two words. Ideally, we'd want it to match something like Cardiac Catheterization.
Based on the need to correct this, we came up with some changes. For one, we go through the trie in a mixed depth/breadth search. Essentially we go depth first as long as a character matches. Those child nodes that didn't match get added to a priority queue. The priority queue is ordered by edit distance, which can be calculated while searching the trie (since if there's a character match, distance remains the same and if not, it increases by 1). By doing this, we get the edit distance for each word. We are no longer using the BitSet. Instead, it's a map of the index to a Terminfo object. This object stores the index of the query phrase and the term phrase and the score. So if the search is "car cat" and a term matched is "Catheterization procedure" the term phrase indices will be 1 as will the query phrase indices. For "Cardiac Catheterization" the term phrase indices will be 1,2 as will the query phrase indices. As you can see, it's very simple afterward to look at the count of term phrase indices and query phrase indices and if they aren't at least equal to the search word count, they can be discarded.
After that, we add up the edit distances of the words, remove the words from the term that match the term phrase index, and count the remaining letters to get the true edit distance. For example, if you matched the term "allergy to strawberries" and your search query was "straw" you would have a score of 7 from strawberries, then you'd use the term phrase index to discard strawberries from the term, and just count "allergy to" (minus the spaces) to get the score of 16.
This gets us the accurate results we expect. However, it is far too slow. Where before we could get 25-40 ms on one word search, now it could be as much as half a second. It's largely from things like instantiating TermInfo objects, using .add() operations, .put() operations and the fact that we have to return a large number of matches. We could limit each search to only return 1000 matches, but there's no guarantee that the first 1000 results for "car" would match any of the first 1000 matches for "cat" (remember, there are over 1.1. million terms).
Even for a single query word, like cat, we still need a large number of matches. This is because if we search for 'cat' the search is going to match car and roll up all the terminal nodes below it (which will be a lot). However, if we limited the number of results, it would place too heavy an emphasis on words that begin with the query and not the edit distance. Thus, words like catheterization would be more likely to be included than something like coat.
So, basically, are there any thoughts on how we could handle the problems that the second implementation fixed, but without as much of the speed slow down that it introduced? I can include some selected code if it might make things clearer but I didn't want to post a giant wall of code.