Boyer–Moore string-search algorithm

In computer science, the Boyer–Moore string-search algorithm is an efficient string-searching algorithm that is the standard benchmark for practical string-search literature.[1] It was developed by Robert S. Boyer and J Strother Moore in 1977.[2] The original paper contained static tables for computing the pattern shifts without an explanation of how to produce them. The algorithm for producing the tables was published in a follow-on paper; this paper contained errors which were later corrected by Wojciech Rytter in 1980.[3][4] The algorithm preprocesses the string being searched for (the pattern), but not the string being searched in (the text). It is thus well-suited for applications in which the pattern is much shorter than the text or where it persists across multiple searches. The Boyer–Moore algorithm uses information gathered during the preprocess step to skip sections of the text, resulting in a lower constant factor than many other string search algorithms. In general, the algorithm runs faster as the pattern length increases. The key features of the algorithm are to match on the tail of the pattern rather than the head, and to skip along the text in jumps of multiple characters rather than searching every single character in the text.

Boyer–Moore string search
ClassString search
Data structureString
Worst-case performanceΘ(m) preprocessing + O(mn) matching[note 1]
Best-case performanceΘ(m) preprocessing + Ω(n/m) matching
Worst-case space complexityΘ(k)[note 2]

Definitions

ANPANMAN-
PAN------
-PAN-----
--PAN----
---PAN---
----PAN--
-----PAN-
Alignments of pattern PAN to text ANPANMAN, from k=3 to k=8. A match occurs at k=5.
  • S[i] denotes the character at index i of string S, counting from 1.
  • S[i..j] denotes the substring of string S starting at index i and ending at j, inclusive.
  • A prefix of S is a substring S[1..i] for some i in range [1, n], where n is the length of S.
  • A suffix of S is a substring S[i..n] for some i in range [1, n], where n is the length of S.
  • The string to be searched for is called the pattern and is denoted by P. Its length is n.
  • The string being searched in is called the text and is denoted by T. Its length is m.
  • An alignment of P to T is an index k in T such that the last character of P is aligned with index k of T.
  • A match or occurrence of P occurs at an alignment if P is equivalent to T[(k-n+1)..k].

Description

The Boyer–Moore algorithm searches for occurrences of P in T by performing explicit character comparisons at different alignments. Instead of a brute-force search of all alignments (of which there are ), Boyer–Moore uses information gained by preprocessing P to skip as many alignments as possible.

Previous to the introduction of this algorithm, the usual way to search within text was to examine each character of the text for the first character of the pattern. Once that was found the subsequent characters of the text would be compared to the characters of the pattern. If no match occurred then the text would again be checked character by character in an effort to find a match. Thus almost every character in the text needs to be examined.

The key insight in this algorithm is that if the end of the pattern is compared to the text, then jumps along the text can be made rather than checking every character of the text. The reason that this works is that in lining up the pattern against the text, the last character of the pattern is compared to the character in the text. If the characters do not match, there is no need to continue searching backwards along the text. If the character in the text does not match any of the characters in the pattern, then the next character in the text to check is located n characters farther along the text, where n is the length of the pattern. If the character in the text is in the pattern, then a partial shift of the pattern along the text is done to line up along the matching character and the process is repeated. Jumping along the text to make comparisons rather than checking every character in the text decreases the number of comparisons that have to be made, which is the key to the efficiency of the algorithm.

More formally, the algorithm begins at alignment , so the start of P is aligned with the start of T. Characters in P and T are then compared starting at index n in P and k in T, moving backward. The strings are matched from the end of P to the start of P. The comparisons continue until either the beginning of P is reached (which means there is a match) or a mismatch occurs upon which the alignment is shifted forward (to the right) according to the maximum value permitted by a number of rules. The comparisons are performed again at the new alignment, and the process repeats until the alignment is shifted past the end of T, which means no further matches will be found.

The shift rules are implemented as constant-time table lookups, using tables generated during the preprocessing of P.

Shift rules

A shift is calculated by applying two rules: the bad character rule and the good suffix rule. The actual shifting offset is the maximum of the shifts calculated by these rules.

The bad character rule


Description

----X--K---
ANPANMANAM-
-NNAAMAN---
---NNAAMAN-
Demonstration of bad character rule with pattern NNAAMAN.

The bad-character rule considers the character in T at which the comparison process failed (assuming such a failure occurred). The next occurrence of that character to the left in P is found, and a shift which brings that occurrence in line with the mismatched occurrence in T is proposed. If the mismatched character does not occur to the left in P, a shift is proposed that moves the entirety of P past the point of mismatch.

Preprocessing

Methods vary on the exact form the table for the bad character rule should take, but a simple constant-time lookup solution is as follows: create a 2D table which is indexed first by the index of the character c in the alphabet and second by the index i in the pattern. This lookup will return the occurrence of c in P with the next-highest index or -1 if there is no such occurrence. The proposed shift will then be , with lookup time and space, assuming a finite alphabet of length k.

The C and Java implementations below have a space complexity (make_delta1, makeCharTable). This is the same as the original delta1 and the BMH bad character table. This table maps a character at position to shift by , with the last instance -- the least shift amount -- taking precedence. All unused characters are set as as a sentinel value.

The good suffix rule


Description

----X--K-----
MANPANAMANAP-
ANAMPNAM-----
----ANAMPNAM-
Demonstration of good suffix rule with pattern ANAMPNAM.

The good suffix rule is markedly more complex in both concept and implementation than the bad character rule. It is the reason comparisons begin at the end of the pattern rather than the start, and is formally stated thus:[5]

Suppose for a given alignment of P and T, a substring t of T matches a suffix of P, but a mismatch occurs at the next comparison to the left. Then find, if it exists, the right-most copy t' of t in P such that t' is not a suffix of P and the character to the left of t' in P differs from the character to the left of t in P. Shift P to the right so that substring t' in P aligns with substring t in T. If t' does not exist, then shift the left end of P past the left end of t in T by the least amount so that a prefix of the shifted pattern matches a suffix of t in T. If no such shift is possible, then shift P by n places to the right. If an occurrence of P is found, then shift P by the least amount so that a proper prefix of the shifted P matches a suffix of the occurrence of P in T. If no such shift is possible, then shift P by n places, that is, shift P past t.

Preprocessing

The good suffix rule requires two tables: one for use in the general case, and another for use when either the general case returns no meaningful result or a match occurs. These tables will be designated L and H respectively. Their definitions are as follows:[5]

For each i, is the largest position less than n such that string matches a suffix of and such that the character preceding that suffix is not equal to . is defined to be zero if there is no position satisfying the condition.

Let denote the length of the largest suffix of that is also a prefix of P, if one exists. If none exists, let be zero.

Both of these tables are constructible in time and use space. The alignment shift for index i in P is given by or . H should only be used if is zero or a match has been found.

The Galil rule

A simple but important optimization of Boyer–Moore was put forth by Galil in 1979.[6] As opposed to shifting, the Galil rule deals with speeding up the actual comparisons done at each alignment by skipping sections that are known to match. Suppose that at an alignment k1, P is compared with T down to character c of T. Then if P is shifted to k2 such that its left end is between c and k1, in the next comparison phase a prefix of P must match the substring T[(k2 - n)..k1]. Thus if the comparisons get down to position k1 of T, an occurrence of P can be recorded without explicitly comparing past k1. In addition to increasing the efficiency of Boyer–Moore, the Galil rule is required for proving linear-time execution in the worst case.

The Galil rule, in its original version, is only effective for versions that output multiple matches. It updates the substring range only on c = 0, i.e. a full match. A generalized version for dealing with submatches was reported in 1985 as the Apostolico–Giancarlo algorithm.[7]

Performance

The Boyer–Moore algorithm as presented in the original paper has worst-case running time of only if the pattern does not appear in the text. This was first proved by Knuth, Morris, and Pratt in 1977,[8] followed by Guibas and Odlyzko in 1980[9] with an upper bound of 5n comparisons in the worst case. Richard Cole gave a proof with an upper bound of 3n comparisons in the worst case in 1991.[10]

When the pattern does occur in the text, running time of the original algorithm is in the worst case. This is easy to see when both pattern and text consist solely of the same repeated character. However, inclusion of the Galil rule results in linear runtime across all cases.[6][10]

Implementations

Various implementations exist in different programming languages. In C++ it is part of the Standard Library since C++17, also Boost provides the generic Boyer–Moore search implementation under the Algorithm library. In Go (programming language) there is an implementation in search.go. D (programming language) uses a BoyerMooreFinder for predicate based matching within ranges as a part of the Phobos Runtime Library.

The Boyer–Moore algorithm is also used in GNU's grep.[11]

Below are a few simple implementations.

Variants

The Boyer–Moore–Horspool algorithm is a simplification of the Boyer–Moore algorithm using only the bad character rule.

The Apostolico–Giancarlo algorithm speeds up the process of checking whether a match has occurred at the given alignment by skipping explicit character comparisons. This uses information gleaned during the pre-processing of the pattern in conjunction with suffix match lengths recorded at each match attempt. Storing suffix match lengths requires an additional table equal in size to the text being searched.

The Raita algorithm improves the performance of Boyer-Moore-Horspool algorithm. The searching pattern of particular sub-string in a given string is different from Boyer-Moore-Horspool algorithm.

Notes

  1. m is the length of the pattern string, which we are searching for in the text, which is of length n. This runtime is for finding all occurrences of the pattern, without the Galil rule.
  2. k is the size of the alphabet
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References

  1. Hume; Sunday (November 1991). "Fast String Searching". Software—Practice and Experience. 21 (11): 1221–1248. doi:10.1002/spe.4380211105. S2CID 5902579.
  2. Boyer, Robert S.; Moore, J Strother (October 1977). "A Fast String Searching Algorithm". Comm. ACM. New York: Association for Computing Machinery. 20 (10): 762–772. doi:10.1145/359842.359859. ISSN 0001-0782.
  3. Knuth, Donald E.; Morris, Jr., James H.; Pratt, Vaughan R. (1977). "Fast Pattern Matching in Strings". SIAM Journal on Computing. 6 (2): 323–350. doi:10.1137/0206024. ISSN 0097-5397.
  4. Rytter, Wojciech (1980). "A Correct Preprocessing Algorithm for Boyer–Moore String-Searching". SIAM Journal on Computing. 9 (3): 509–512. doi:10.1137/0209037. ISSN 0097-5397.
  5. Gusfield, Dan (1999) [1997], "Chapter 2 - Exact Matching: Classical Comparison-Based Methods", Algorithms on Strings, Trees, and Sequences (1 ed.), Cambridge University Press, pp. 19–21, ISBN 0521585198
  6. Galil, Z. (September 1979). "On improving the worst case running time of the Boyer–Moore string matching algorithm". Comm. ACM. New York: Association for Computing Machinery. 22 (9): 505–508. doi:10.1145/359146.359148. ISSN 0001-0782.
  7. Apostolico, Alberto; Giancarlo, Raffaele (February 1986). "The Boyer–Moore–Galil String Searching Strategies Revisited". SIAM Journal on Computing. 15: 98–105. doi:10.1137/0215007.
  8. Knuth, Donald; Morris, James H.; Pratt, Vaughan (1977). "Fast pattern matching in strings". SIAM Journal on Computing. 6 (2): 323–350. CiteSeerX 10.1.1.93.8147. doi:10.1137/0206024.
  9. Guibas, Leonidas; Odlyzko, Andrew (1977). "A new proof of the linearity of the Boyer–Moore string searching algorithm". Proceedings of the 18th Annual Symposium on Foundations of Computer Science. Washington, District of Columbia: IEEE Computer Society: 189–195. doi:10.1109/SFCS.1977.3.
  10. Cole, Richard (September 1991). "Tight bounds on the complexity of the Boyer–Moore string matching algorithm". Proceedings of the 2nd Annual ACM-SIAM Symposium on Discrete Algorithms. Philadelphia, Pennsylvania: Society for Industrial and Applied Mathematics: 224–233. ISBN 0-89791-376-0.
  11. https://lists.freebsd.org/pipermail/freebsd-current/2010-August/019310.html
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