Fast way to search based on non-literal comparison
I am developing a small search over rather large data sets, basically all strings. The relation between the table fields are simple enough, though the comparison mustn’t be literal. i.e. it should be able to correlate “filippo“, “philippo“, “filipo“ and so forth.
In a nutshell I have two tables, a small one with “search keys“ and a more massive one in which the search should be performed. Both tables have the same fields and they both have the same "meaning". E.g.
KEYS_TABLE # | NAME | MIDNAME | SURNAME | ADDRESS | PHONE 1 | John | Fake | Doe | Sesame St. | 333-12-32 2 | Ralph | Stue | Michel | Bart. Ghost St. | 778-13000 ...
SEARCH_TABLE # | NAME | MIDNAME | SURNAME | ADDRESS | PHONE ... 532 | Jhon | F. | Doe | Sesame Street | 3331232 ... 999 | Richard | Dalas | Doe | Sesame St. | 333-12-32
All I want to do is os obtain some sort of metric, or rank for each given record on
KEYS_TABLE, report all records from
SEARCH_TABLE above a certain relevance (defined either by the metric or simply some "KNN" like method).
I say that Levinstein distance might not be practical because it would require to calculate for every field in every row in
SEARCH_TABLE. Considering that
SEARCH_TABLE has about 400 million records and
KEYS_TABLE varies from 100k to 1mil, the resulting number is way too large.
I was hoping there was some way I could previously enrich both tables, or some simpler (cheaper) way to perform the search.
Worth mentioning that I am allowed to transform the data at will. e.g. normalise
st, remove special chars and so on.
What would be my options?