In
information theory
Information theory is the scientific study of the quantification (science), quantification, computer data storage, storage, and telecommunication, communication of information. The field was originally established by the works of Harry Nyquist a ...
, the Hamming distance between two
string
String or strings may refer to:
*String (structure), a long flexible structure made from threads twisted together, which is used to tie, bind, or hang other objects
Arts, entertainment, and media Films
* ''Strings'' (1991 film), a Canadian anim ...
s of equal length is the number of positions at which the corresponding
symbol
A symbol is a mark, sign, or word that indicates, signifies, or is understood as representing an idea, object, or relationship. Symbols allow people to go beyond what is known or seen by creating linkages between otherwise very different conc ...
s are different. In other words, it measures the minimum number of ''substitutions'' required to change one string into the other, or the minimum number of ''errors'' that could have transformed one string into the other. In a more general context, the Hamming distance is one of several
string metrics for measuring the
edit distance between two sequences. It is named after the American mathematician
Richard Hamming.
A major application is in
coding theory, more specifically to
block codes, in which the equal-length strings are
vectors over a
finite field.
Definition
The Hamming distance between two equal-length strings of symbols is the number of positions at which the corresponding symbols are different.
Examples
The symbols may be letters, bits, or decimal digits, among other possibilities. For example, the Hamming distance between:
* "kain" and "kain" is 3.
* "krin" and "krin" is 3.
* "kin" and "kin" is 4.
* and is 4.
* 2396 and 2396 is 3.
Properties
For a fixed length ''n'', the Hamming distance is a
metric on the set of the
words of length ''n'' (also known as a
Hamming space), as it fulfills the conditions of non-negativity, symmetry, the Hamming distance of two words is 0 if and only if the two words are identical, and it satisfies the
triangle inequality as well:
Indeed, if we fix three words ''a'', ''b'' and ''c'', then whenever there is a difference between the ''i''th letter of ''a'' and the ''i''th letter of ''c'', then there must be a difference between the ''i''th letter of ''a'' and ''i''th letter of ''b'', or between the ''i''th letter of ''b'' and the ''i''th letter of ''c''. Hence the Hamming distance between ''a'' and ''c'' is not larger than the sum of the Hamming distances between ''a'' and ''b'' and between ''b'' and ''c''. The Hamming distance between two words ''a'' and ''b'' can also be seen as the
Hamming weight of ''a'' − ''b'' for an appropriate choice of the − operator, much as the difference between two integers can be seen as a distance from zero on the number line.
For binary strings ''a'' and ''b'' the Hamming distance is equal to the number of ones (
population count) in ''a''
XOR
Exclusive or or exclusive disjunction is a logical operation that is true if and only if its arguments differ (one is true, the other is false).
It is symbolized by the prefix operator J and by the infix operators XOR ( or ), EOR, EXOR, , ...
''b''.
The metric space of length-''n'' binary strings, with the Hamming distance, is known as the ''Hamming cube''; it is equivalent as a metric space to the set of distances between vertices in a
hypercube graph. One can also view a binary string of length ''n'' as a vector in
by treating each symbol in the string as a real coordinate; with this embedding, the strings form the vertices of an ''n''-dimensional
hypercube
In geometry, a hypercube is an ''n''-dimensional analogue of a square () and a cube (). It is a closed, compact, convex figure whose 1- skeleton consists of groups of opposite parallel line segments aligned in each of the space's dimensions, ...
, and the Hamming distance of the strings is equivalent to the
Manhattan distance between the vertices.
Error detection and error correction
The minimum Hamming distance is used to define some essential notions in
coding theory, such as
error detecting and error correcting codes. In particular, a
code
In communications and information processing, code is a system of rules to convert information—such as a letter, word, sound, image, or gesture—into another form, sometimes shortened or secret, for communication through a communication ...
''C'' is said to be ''k'' error detecting if, and only if, the minimum Hamming distance between any two of its codewords is at least ''k''+1.
For example, consider the code consisting of two codewords "000" and "111". The hamming distance between these two words is 3, and therefore it is ''k''=2 error detecting. This means that if one bit is flipped or two bits are flipped, the error can be detected. If three bits are flipped, then "000" becomes "111" and the error can not be detected.
A code ''C'' is said to be ''k-error correcting'' if, for every word ''w'' in the underlying Hamming space ''H'', there exists at most one codeword ''c'' (from ''C'') such that the Hamming distance between ''w'' and ''c'' is at most ''k''. In other words, a code is ''k''-errors correcting if, and only if, the minimum Hamming distance between any two of its codewords is at least 2''k''+1. This is more easily understood geometrically as any
closed balls of radius ''k'' centered on distinct codewords being disjoint.
These balls are also called ''
Hamming spheres'' in this context.
For example, consider the same 3 bit code consisting of two codewords "000" and "111". The Hamming space consists of 8 words 000, 001, 010, 011, 100, 101, 110 and 111. The codeword "000" and the single bit error words "001","010","100" are all less than or equal to the Hamming distance of 1 to "000". Likewise, codeword "111" and its single bit error words "110","101" and "011" are all within 1 Hamming distance of the original "111". In this code, a single bit error is always within 1 Hamming distance of the original codes, and the code can be ''1-error correcting'', that is ''k=1''. The minimum Hamming distance between "000" and "111" is 3, which satisfies ''2k+1 = 3''.
Thus a code with minimum Hamming distance ''d'' between its codewords can detect at most ''d''-1 errors and can correct ⌊(''d''-1)/2⌋ errors.
The latter number is also called the ''
packing radius'' or the ''error-correcting capability'' of the code.
History and applications
The Hamming distance is named after
Richard Hamming, who introduced the concept in his fundamental paper on
Hamming code
In computer science and telecommunication, Hamming codes are a family of linear error-correcting codes. Hamming codes can detect one-bit and two-bit errors, or correct one-bit errors without detection of uncorrected errors. By contrast, the sim ...
s, ''Error detecting and error correcting codes'', in 1950. Hamming weight analysis of bits is used in several disciplines including
information theory
Information theory is the scientific study of the quantification (science), quantification, computer data storage, storage, and telecommunication, communication of information. The field was originally established by the works of Harry Nyquist a ...
,
coding theory, and
cryptography.
It is used in
telecommunication to count the number of flipped bits in a fixed-length binary word as an estimate of error, and therefore is sometimes called the signal distance.
For ''q''-ary strings over an
alphabet of size ''q'' ≥ 2 the Hamming distance is applied in case of the
q-ary symmetric channel, while the
Lee distance is used for
phase-shift keying
Phase-shift keying (PSK) is a digital modulation process which conveys data by changing (modulating) the phase of a constant frequency reference signal (the carrier wave). The modulation is accomplished by varying the sine and cosine inputs at a ...
or more generally channels susceptible to
synchronization error
Synchronization is the coordination of events to operate a system in unison. For example, the conductor of an orchestra keeps the orchestra synchronized or ''in time''. Systems that operate with all parts in synchrony are said to be synchronou ...
s because the Lee distance accounts for errors of ±1.
If
or
both distances coincide because any pair of elements from
or
differ by 1, but the distances are different for larger
.
The Hamming distance is also used in
systematics
Biological systematics is the study of the diversification of living forms, both past and present, and the relationships among living things through time. Relationships are visualized as evolutionary trees (synonyms: cladograms, phylogenetic tre ...
as a measure of genetic distance.
However, for comparing strings of different lengths, or strings where not just substitutions but also insertions or deletions have to be expected, a more sophisticated metric like the
Levenshtein distance is more appropriate.
Algorithm example
The following function, written in Python 3, returns the Hamming distance between two strings:
def hamming_distance(string1, string2):
if (len(string1) != len(string2)):
raise Exception('Strings must be of equal length.')
dist_counter = 0
for n in range(len(string1)):
if string1 != string2
dist_counter += 1
return dist_counter
Or, in a shorter expression:
sum(xi != yi for xi, yi in zip(x, y))
The function
hamming_distance()
, implemented in
Python 3, computes the Hamming distance between two strings (or other
iterable objects) of equal length by creating a sequence of Boolean values indicating mismatches and matches between corresponding positions in the two inputs, then summing the sequence with True and False values, interpreted as one and zero, respectively.
def hamming_distance(s1, s2) -> int:
"""Return the Hamming distance between equal-length sequences."""
if len(s1) != len(s2):
raise ValueError("Undefined for sequences of unequal length.")
return sum(el1 != el2 for el1, el2 in zip(s1, s2))
where th
zip()function merges two equal-length collections in pairs.
The following
C function will compute the Hamming distance of two integers (considered as binary values, that is, as sequences of bits). The running time of this procedure is proportional to the Hamming distance rather than to the number of bits in the inputs. It computes the
bitwise
In computer programming, a bitwise operation operates on a bit string, a bit array or a binary numeral (considered as a bit string) at the level of its individual bits. It is a fast and simple action, basic to the higher-level arithmetic oper ...
exclusive or of the two inputs, and then finds the
Hamming weight of the result (the number of nonzero bits) using an algorithm of that repeatedly finds and clears the lowest-order nonzero bit. Some compilers support the
__builtin_popcount function which can calculate this using specialized processor hardware where available.
int hamming_distance(unsigned x, unsigned y)
A faster alternative is to use the population count (''popcount'') assembly instruction. Certain compilers such as GCC and Clang make it available via an intrinsic function:
// Hamming distance for 32-bit integers
int hamming_distance32(unsigned int x, unsigned int y)
// Hamming distance for 64-bit integers
int hamming_distance64(unsigned long long x, unsigned long long y)
See also
*
Closest string
*
Damerau–Levenshtein distance
*
Euclidean distance
*
Gap-Hamming problem
*
Gray code
The reflected binary code (RBC), also known as reflected binary (RB) or Gray code after Frank Gray, is an ordering of the binary numeral system such that two successive values differ in only one bit (binary digit).
For example, the representati ...
*
Jaccard index
*
Levenshtein distance
*
Mahalanobis distance The Mahalanobis distance is a measure of the distance between a point ''P'' and a distribution ''D'', introduced by P. C. Mahalanobis in 1936. Mahalanobis's definition was prompted by the problem of identifying the similarities of skulls based ...
*
Mannheim distance In coding theory, the Lee distance is a distance between two strings x_1 x_2 \dots x_n and y_1 y_2 \dots y_n of equal length ''n'' over the ''q''-ary alphabet of size . It is a metric defined as
\sum_^n \min(, x_i - y_i, ,\, q - , x_i - y_i, ).
I ...
*
Sørensen similarity index Sørensen () is a Danish-Norwegian patronymic surname meaning "son of Søren" (given name equivalent of Severin). , it is the eighth most common surname in Denmark. Immigrants to English-speaking countries often changed the spelling to ''Sorensen'' ...
*
Sparse distributed memory
*
Word ladder
References
Further reading
*
*
*
{{Authority control
String metrics
Coding theory
Articles with example Python (programming language) code
Articles with example C++ code
Metric geometry
Cubes