Dictionary Definition
combinatorial adj
1 relating to or involving combinations [syn:
combinative,
combinatory]
2 relating to the combination and arrangement of
elements in sets
User Contributed Dictionary
English
Adjective
- Of, pertaining to, or involving combinations
- Of or pertaining to the combination and arrangement of elements in sets
Derived terms
- combinatorial analysis
- combinatorial auction
- combinatorial chemistry
- combinatorial class
- combinatorial composition
- combinatorial control
- combinatorial design
- combinatorial dual graph
- combinatorial enumeration
- combinatorial explosion
- combinatorial game theory
- combinatorial geometry
- combinatorial logic
- combinatorial meta analysis
- combinatorial method
- combinatorial number
- combinatorial optimization
- combinatorial principle
- combinatorial proof
- combinatorial species
- combinatorial synthesis
- combinatorial theory
- combinatorial topology
Translations
of, pertaining to, or involving combinations
- German: kombinatorisch
mathematics: of or pertaining to the combination
and arrangement of elements in sets
- German: kombinatorisch
Extensive Definition
Combinatorics is a branch of pure
mathematics concerning the study of discrete
(and usually finite)
objects. It is related to many other areas of mathematics, such as
algebra, probability
theory, ergodic
theory and geometry, as well as to applied
subjects in computer
science and statistical
physics. Aspects of combinatorics include "counting" the
objects satisfying certain criteria (enumerative
combinatorics), deciding when the criteria can be met, and
constructing and analyzing objects meeting the criteria (as in
combinatorial
designs and matroid
theory), finding "largest", "smallest", or "optimal" objects
(extremal
combinatorics and combinatorial
optimization), and finding algebraic structures these
objects may have (algebraic
combinatorics).
Combinatorics is as much about problem solving as
theory building, though it has developed powerful theoretical
methods, especially since the later twentieth century (see the page
List of combinatorics topics for details of the more recent
development of the subject). One of the oldest and most accessible
parts of combinatorics is graph
theory, which also has numerous natural connections to other
areas.
There are many combinatorial patterns and
theorems related to the
structure of combinatoric sets. These often focus on a partition
or ordered
partition of a set. See the List
of partition topics for an expanded list of related topics or
the
List of combinatorics topics for a more general listing. Some
of the more notable results are highlighted below.
An example of a simple combinatorial question is
the following: What is the number of possible orderings of a deck
of 52 distinct playing cards? The answer is 52! (52 factorial), which is equal to
about 8.0658 × 1067.
Another example of a more difficult problem:
Given a certain number n of people, is it possible to assign them
to sets so that each person is in at least one set, each pair of
people is in exactly one set together, every two sets have exactly
one person in common, and no set contains everyone, all but one
person, or exactly one person? The answer depends on n. See
"Design
theory" below.
Combinatorics is used frequently in computer
science to obtain estimates on the number of elements of
certain sets. A mathematician who studies combinatorics is often
referred to as a combinatorialist or combinatorist.
History of Combinatorics
Earliest uses
The earliest books about combinatorics are from India. A Jainist text, the Bhagabati Sutra, had the first mention of a combinatorics problem; it asked how many ways one could take six tastes one, two, or three tastes at a time. The Bhagabati Sutra was written around 300 BC, and thus was the first book to mention the choice function . The next ideas of Combinatorics came from Pingala, who was interested in prosody. Specifically, he wanted to know how many ways a six syllable meter could be made from short and long notes. He wrote this problem in the Chanda sutra (also Chandahsutra) in the second century BC . In addition, he also found the number of meters that had n long notes and k short notes, which is equivalent to finding the binomial coefficients.The ideas of the Bhagabati were generalized by
the Indian mathematician Mahariva in 850 AD, and Pingala's work on
prosody was expanded by Bhaskara and Hemacandra in 1100 AD.
Bhaskara was the first known person to find the generalized choice
function, although Brahmagupta may
have known earlier. Hemacandra asked how many meters existed of a
certain length if a long note was considered to be twice as long as
a short note, which is equivalent to finding the Fibonacci numbers.
While India was the first nation to publish results on
Combinatorics, there were discoveries by other nations on similar
topics. The earliest known connection to Combinatorics comes from
the Rhind
papyrus, problem 79, for the implementation of a geometric
series. The next milestone is held by the I Ching. The book
is about what different hexagrams mean, and to do this they needed
to know how many possible hexagrams there were. Since each hexagram
is a permutation with repetitions of six lines, where each line can
be one of two states, solid or dashed, combinatorics yields the
result that there are 2^6=64 hexagrams. A monk also may have
counted the number of configurations to a game similar to Go
around 700 AD. Although China had relatively few advancements in
enumerative combinatorics, they solved a combinatorial
design problem, the magic
square, around 100 AD.
In Greece, Plutarch wrote
that the Xenocrates discovered the number of different syllables
possible in the Greek language. This, however, is unlikely because
this is one of the few mentions of Combinatorics in Greece. The
number they found, 1.002 \cdot 10^ also seems too round to be more
than a guess. .
Magic squares remained an interest of China, and
they began to generalize their original 3×3 square between 900 and
1300 AD. China corresponded with the Middle East about this problem
in the 13th century. The Middle East also learned about binomial
coefficients from Indian work, and found the connection to
polynomial expansion.
Combinatorics in the West
Combinatorics came to Europe in the 13th century through two mathematicians, Leonardo Fibonacci and Jordanus de Nemore. Fibonacci's Liber Abaci introduced many of the Arabian and Indian ideas to Europe, including that of the Fibonacci numbers. Jordanus was the first person to arrange the binomial coefficients in a triangle, as he did in proposition 70 of De Arithmetica. This was also done in the Middle East in 1265, and China around 1300. Today, this triangle is known as Pascal's triangle.Pascal's
contribution to the triangle that bears his name comes from his
work on formal proofs about it, in addition to his connection
between it and probability. Together with Leibniz and his ideas
about partitions in the 17th century, they are considered the
founders of modern combinatorics.
Both Pascal and Leibniz understood that algebra
and combinatorics corresponded (aka, binomial expansion was
equivalent to the choice function). This was expanded by De Moivre,
who found the expansion of a multinomial. De Moivre also found the
formula for derangements using the principle of
inclusion-exclusion, a method different from Nikolaus Bernouli, who
had found them previously. He managed to approximate the binomial
coefficients and factorial.
Finally, he found a closed form for the Fibonacci numbers by
inventing generating
functions.
In the 18th century, Euler worked on
problems of combinatorics. In addition to working on several
problems of probability which link to combinatorics, he worked on
the knights
tour, Graeco-Latin
square, Eulerian
numbers, and others. He also invented graph theory by solving
the
Seven Bridges of Königsberg problem, which also led to the
formation of topology.
Finally, he broke ground with partitions by the use of
generating
functions.
Enumerative combinatorics
Counting the number of ways that certain patterns can be formed is the central problem of enumerative combinatorics. Two examples of this type of problem are counting combinations and counting permutations (as discussed in the previous section). More generally, given an infinite collection of finite sets indexed by the natural numbers, enumerative combinatorics seeks to describe a counting function which counts the number of objects in Sn for each n. Although counting the number of elements in a set is a rather broad mathematical problem, many of the problems that arise in applications have a relatively simple combinatorial description.The simplest such functions are closed
formulas, which can be expressed as a composition of elementary
functions such as factorials, powers, and so on.
For instance, as shown below, the number of different possible
orderings of a deck of n cards is f(n) = n!. Often, no closed form
is initially available. In these cases, we frequently first derive
a recurrence relation, then solve the recurrence to arrive at the
desired closed form.
Finally, f(n) may be expressed by a formal
power series, called its generating
function, which is most commonly either the
ordinary generating function
- \sum_ f(n) x^n
- \sum_ f(n) \frac.
Often, a complicated closed formula yields little
insight into the behavior of the counting function as the number of
counted objects grows. In these cases, a simple asymptotic approximation may
be preferable. A function g(n) is an asymptotic approximation to
f(n) if f(n)/g(n)\rightarrow 1 as n\rightarrowinfinity.
In this case, we write f(n) \sim g(n)\,.
Once determined, the generating function may
allow one to extract all the information given by the previous
approaches. In addition, the various natural operations on
generating functions such as addition, multiplication,
differentiation, etc., have a combinatorial significance; this
allows one to extend results from one combinatorial problem in
order to solve others.
Permutations with repetitions
When the order matters, and an object can be chosen more than once, the number of permutations is- n^r \,\!
where n is the number of objects from which you
can choose and r is the number to be chosen.
For example, if you have the letters A, B, C, and
D and you wish to discover the number of ways to arrange them in
three letter patterns (trigrams)
- order matters (e.g., A-B is different from B-A, both are included as possibilities)
- an object can be chosen more than once (A-A possible)
you find that there are 43 or 64 ways. This is
because for the first slot you can choose any of the four values,
for the second slot you can choose any of the four, and for the
final slot you can choose any of the four letters. Multiplying them
together gives the total.
Permutations without repetitions
When the order matters and each object can be chosen only once, then the number of permutations is- (n)_ = \frac where n is the number of objects from which you can choose, r is the number to be chosen and "!" is the standard symbol meaning factorial.
Note that if n = r (meaning the number of chosen
elements is equal to the number of elements to choose from; five
people and pick all five) then the formula becomes
- \frac = \frac = n!
For example, if you have the same five people and
you want to find out how many ways you may arrange them, it would
be 5! or
5 × 4 × 3 × 2 × 1 = 120
ways. The reason for this is that you can choose from 5 for the
initial slot, then you are left with only 4 to choose from for the
second slot etc. Multiplying them together gives the total of
120.
Combinations without repetitions
When the order does not matter and each object can be chosen only once, the number of combinations is the binomial coefficient:- =
where n is the number of objects from which you
can choose and k is the number to be chosen.
For example, if you have ten numbers and wish to
choose 5 you would have 10!/(5!(10 − 5)!) = 252
ways to choose. The binomial coefficient is also used to calculate
the number of permutations in a lottery.
Combinations with repetitions
When the order does not matter and an object can be chosen more than once, then the number of combinations is- = =
where n is the number of objects from which you
can choose and k is the number to be chosen.
For example, if you have ten types of donuts (n)
on a menu to choose from and you want three donuts (k) there are
(10 + 3 − 1)! / 3!(10 − 1)! = 220 ways to
choose (see also multiset).
Fibonacci numbers
Let f(n) be the number of distinct subsets of the set S(n)=\ that do not contain two consecutive integers. When n = 4, we have the sets , , , , , , , , so f(4) = 8. We count the desired subsets of S(n) by separately counting those subsets that contain element n and those that do not. If a subset contains n, then it does not contain element n-1. So there are exactly f(n-2) of the desired subsets that contain element n. The number of subsets that do not contain n is simply f(n-1). Adding these numbers together, we get the recurrence relation:- f(n) = f(n-1) + f(n-2)\, ,
where f(1)=2 and f(2)=3.
As early as 1202, Leonardo
Fibonacci studied these numbers. They are now called Fibonacci
numbers; in particular, f(n) is known as the n+2nd Fibonacci
number. Although the recurrence relation allows us to compute every
Fibonacci number, the computation is inefficient. However, by using
standard techniques to solve recurrence
relations, we can reach the closed
form solution:
- f(n) = \frac
where \phi = (1 + \sqrt 5) / 2, the golden
ratio.
In the above example, an asymptotic
approximation to f(n) is:
- f(n) \sim \frac
as n becomes large.
Structural combinatorics
Graph theory
Graphs are basic objects in combinatorics. The questions range from counting (e.g. the number of graphs on n vertices with k edges) to structural (e.g. which graphs contain Hamiltonian cycles) to algebraic questions (e.g. given a graph G and two numbers x and y, does the Tutte polynomial TG(x,y) have a combinatorial interpretation?). It should be noted that while there are very strong connections between graph theory and combinatorics, these two are sometimes thought of as separate subjects.Design theory
A simple result in the block design area of combinatorics is that the problem of forming sets, described in the introduction, has a solution only if n has the form q2 + q + 1. It is less simple to prove that a solution exists if q is a prime power. It is conjectured that these are the only solutions. It has been further shown that if a solution exists for q congruent to 1 or 2 mod 4, then q is a sum of two square numbers. This last result, the Bruck-Ryser theorem, is proved by a combination of constructive methods based on finite fields and an application of quadratic forms.When such a structure does exist, it is called a
finite projective
plane; thus showing how finite
geometry and combinatorics intersect.
Matroid theory
Matroid theory abstracts part of geometry. It studies the properties of sets (usually, finite sets) of vectors in a vector space that do not depend on the particular coefficients in a linear dependence relation. Not only the structure but also enumerative properties belong to matroid theory.For instance, given a set of n vectors in
Euclidean
space, what is the largest number of planes
they can generate? Answer: the binomial
coefficient
- \binom.
Is there a set that generates exactly one less
plane? (No, in almost all cases.) These are extremal questions in
geometry, as discussed below.
Extremal and probabilistic combinatorics
Many extremal questions deal with set systems. A simple example is the following: what is the largest number of subsets of an n-element set one can have, if no two of the subsets are disjoint? Answer: half the total number of subsets. Proof: Call the n-element set S. Between any subset T and its complement S − T, at most one can be chosen. This proves the maximum number of chosen subsets is not greater than half the number of subsets. To show one can attain half the number, pick one element x of S and choose all the subsets that contain x.A more difficult problem is to characterize the
extremal solutions; in this case, to show that no other choice of
subsets can attain the maximum number while satisfying the
requirement.
Often it is too hard even to find the extremal
answer f(n) exactly and one can only give an asymptotic estimate.
Ramsey theory
Ramsey theory is a celebrated part of extremal combinatorics. It states that any sufficiently large random configuration will contain some sort of order.Frank P.
Ramsey proved that for every integer k there is an integer n,
such that every graph on n vertices either contains a clique or an
independent set of size k. This is a special case of Ramsey's
theorem. For example, given any group of six people, it is
always the case that one can find three people out of this group
that either all know each other or all do not know each other. The
key to the proof in this case is the Pigeonhole
Principle: either A knows three of the remaining people, or A
does not know three of the remaining people.
Here is a simple proof: Take any one of the six
people, call him A. Either A knows three of the remaining people,
or A does not know three of the remaining people. Assume the former
(the proof is identical if we assume the latter). Let the three
people that A knows be B, C, and D. Now either two people from know
each other (in which case we have a group of three people who know
each other - these two plus A) or none of B,C,D know each other (in
which case we have a group of three people who do not know each
other - B,C,D). QED.
Extremal combinatorics
The types of questions addressed in this case are about the largest possible graph which satisfies certain properties. For example, the largest triangle-free graph on 2n vertices is a complete bipartite graph Kn,n.Probabilistic combinatorics
Here the questions are of the following type: what is the probability of a certain graph property for a random graph (within a certain class) E.g. what is the average number of triangles in a random graph? Probabilistic methods are also used to determine the existence of combinatorial objects with certain prescribed properties (for which explicit examples might be difficult to find), simply by observing that the probability of randomly selecting an object with those properties is greater than 0.Geometric combinatorics
Geometric combinatorics is related to convex and discrete geometry. It asks, e.g. how many faces of each dimension can a convex polytope have. Metric properties of polytopes play an important role as well, e.g. the Cauchy theorem on rigidity of convex polytopes. Special polytopes are also considered, such as permutohedron, associahedron and Birkhoff polytope.Topological Combinatorics
See main article on Topological
combinatorics.
Combinatorial analogs of concepts and methods in
topology are used to
study graph
coloring, fair
division, partitions, partially
ordered sets, decision
trees, necklace
problems and discrete
Morse theory.
See also
- Combinadic
- Combinatorial auction
- Combinatorial chemistry
- Combinatorial explosion
- Combinatorial principles
- Factoradic
- Fundamental theorem of combinatorial enumeration
- Inclusion-exclusion principle
- List of combinatorics topics
- List of combinatorists
- List of publications in mathematics
- Method of distinguished element
- Musical set theory
References
- Bjorner, A. and Stanley, R.P., A Combinatorial Miscellany
- Graham, R.L., Groetschel M., and Lovász L., eds. (1996). Handbook of Combinatorics, Volumes 1 and 2. Elsevier (North-Holland), Amsterdam, and MIT Press, Cambridge, Mass. ISBN 0-262-07169-X.
- The Crest of the Peacock: Non-European Roots of Mathematics
- Katz, Victor J. (1998). A History of Mathematics: An Introduction, 2nd Edition. Addison-Wesley Education Publishers. ISBN 0-321-01618-1.
- Lindner, Charles C. and Christopher A. Rodger (eds.) Design Theory, CRC-Press; 1st. edition (October 31, 1997). ISBN 0-8493-3986-3.
- van Lint, J.H., and Wilson, R.M. (2001). A Course in Combinatorics, 2nd Edition. Cambridge University Press. ISBN 0-521-80340-3.
- O'Connor, John J. and Robertson, Edmund F. (1999-2004). MacTutor History of Mathematics archive. St Andrews University.
- Rashed, R. (1994). The development of Arabic mathematics: between arithmetic and algebra. London.
- Stanley, Richard P. (1997, 1999). Enumerative Combinatorics, Volumes 1 and 2. Cambridge University Press. ISBN 0-521-55309-1, ISBN 0-521-56069-1.
- Combinatorial Analysis – an article in Encyclopædia Britannica Eleventh Edition
- Riordan, John (1958). An Introduction to Combinatorial Analysis, Wiley & Sons, New York (republished).
- Riordan, John (1968). Combinatorial identities, Wiley & Sons, New York (republished).
combinatorial in Bulgarian: Комбинаторика
combinatorial in Catalan: Combinatòria
matemàtica
combinatorial in Czech: Kombinatorika
combinatorial in Chuvash: Комбинаторика
combinatorial in Danish: Kombinatorik
combinatorial in German: Kombinatorik
combinatorial in Estonian: Kombinatoorika
combinatorial in Spanish: Combinatoria
combinatorial in Esperanto: Kombinatoriko
combinatorial in Persian: ترکیبیات
combinatorial in French: Combinatoire
combinatorial in Galician: Combinatoria
combinatorial in Korean: 조합론
combinatorial in Indonesian: Kombinatorik
combinatorial in Ido: Kombinatoriko
combinatorial in Icelandic: Talningarfræði
combinatorial in Italian: Calcolo
combinatorio
combinatorial in Hebrew: קומבינטוריקה
combinatorial in Lithuanian: Kombinatorika
combinatorial in Hungarian: Kombinatorika
combinatorial in Dutch: Combinatoriek
combinatorial in Japanese: 組合せ数学
combinatorial in Norwegian: Kombinatorikk
combinatorial in Polish: Kombinatoryka
combinatorial in Portuguese: Combinatória
combinatorial in Romanian: Combinatorică
combinatorial in Russian: Комбинаторика
combinatorial in Simple English:
Combinatorics
combinatorial in Slovak: Kombinatorika
combinatorial in Serbian: Комбинаторна
математика
combinatorial in Finnish: Kombinatoriikka
combinatorial in Swedish: Kombinatorik
combinatorial in Thai:
คณิตศาสตร์เชิงการจัด
combinatorial in Vietnamese: Toán học tổ
hợp
combinatorial in Turkmen: Kombinatorika
combinatorial in Chinese: 组合数学