Basic classificationThe various algorithms can be classified by the number of patterns each uses. Single pattern algorithmsLet m be the length of the pattern and let n be the length of the searchable text.
1Asymptotic times are expressed using O, Ω, and Θ notation The Boyer–Moore string search algorithm has been the standard benchmark for the practical string search literature.[1] Algorithms using finite set of patternsAlgorithms using infinite number of patternsNaturally, the patterns can not be enumerated in this case. They are represented usually by a regular grammar or regular expression. Other classificationOther classification approaches are possible. One of the most common uses preprocessing as main criteria.
Naïve string searchThe simplest and least efficient way to see where one string occurs inside another is to check each place it could be, one by one, to see if it's there. So first we see if there's a copy of the needle in the first character of the haystack; if not, we look to see if there's a copy of the needle starting at the second character of the haystack; if not, we look starting at the third character, and so forth. In the normal case, we only have to look at one or two characters for each wrong position to see that it is a wrong position, so in the average case, this takes O(n + m) steps, where n is the length of the haystack and m is the length of the needle; but in the worst case, searching for a string like "aaaab" in a string like "aaaaaaaaab", it takes O(nm) steps. Finite state automaton based searchIn this approach, we avoid backtracking by constructing a deterministic finite automaton that recognizes strings containing the desired search string. These are expensive to construct—they are usually created using the powerset construction—but very quick to use. For example, the DFA shown to the right recognizes the word "MOMMY". This approach is frequently generalized in practice to search for arbitrary regular expressions. StubsKnuth-Morris-Pratt computes a deterministic finite automaton that recognizes inputs with the string to search for as a suffix, Boyer-Moore starts searching from the end of the needle, so it can usually jump ahead a whole needle-length at each step. Baeza-Yates keeps track of whether the previous j characters were a prefix of the search string, and is therefore adaptable to fuzzy string searching. The bitap algorithm is an application of Baeza-Yates' approach. Index methodsFaster search algorithms are based on preprocessing of the text. After building a substring index, for example a suffix tree or suffix array, the occurrences of a pattern can be found quickly. As an example, a suffix tree can be built in Θ(m) time, and all z occurrences of a pattern can be found in O(m + z) time (if the alphabet size is viewed as a constant). Other variantsSome search methods, for instance trigram search, are intended to find a "closeness" score between the search string and the text rather than a "match/non-match". These are sometimes called "fuzzy" searches. See alsoReferences
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