If you are only going to implement what
boolean mode (no relevance counting), you should implement the following basic functionality:
wordbreaker, an algorithm that splits the strings into words. This is trivial in English but can be a problem for some Asian languages which do not use spaces between words.
stemmer, an algorithm which reduces words to their basic forms, so that
gone both become
spellchecker, an algorithm which corrects the common spelling errors.
thesaurus, which reduces the synonyms to their common form.
A result of all this is that you have a string like this:
a fast oburn vixen jmups over an indolent canine
split into the basic forms of the words with the synonyms replaced and errors corrected:
Then you just create a composite index on
(word, rowid), where
word is the basic form and
rowid is the
PRIMARY KEY of the record indexed.
To query for, say,
'+quick +fox', you should search your index for these words and find an intersection on
rowid. The intersecting
rowid will contain both words.
If you are going to take relevance into account, you should additionally maintain a per-word statistics in a separate index over the whole corpus.
I should warn you that this is not a simple task. Just take a look at
Sphinx source code.