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In [[computer science]], '''parameterized complexity''' is a branch of [[computational complexity theory]] that focuses on classifying [[computational problems]] according to their inherent difficulty with respect to ''multiple'' parameters of the input or output. The complexity of a problem is then measured as a [[Function (mathematics)|function]] of those parameters. This allows the classification of [[NP-hard]] problems on a finer scale than in the classical setting, where the complexity of a problem is only measured as a function of the number of bits in the input. This appears to have been first demonstrated in {{harvtxt|Gurevich|Stockmeyer|Vishkin|1984}}. The first systematic work on parameterized complexity was done by {{harvtxt|Downey|Fellows|1999}}.
Under the assumption that [[P versus NP problem|P ≠ NP]], there exist many natural problems that require
The existence of efficient, exact, and deterministic solving algorithms for [[NP-complete]], or otherwise [[NP-hard]], problems is considered unlikely, if input parameters are not fixed; all known solving algorithms for these problems require time that is [[Exponential time|exponential]] (so in particular
Problems in which some parameter {{mvar|k}} is fixed are called parameterized problems. A parameterized problem that allows for such an
Many problems have the following form: given an object {{mvar|x}} and a nonnegative integer {{mvar|k}}, does {{mvar|x}} have some property that depends on {{mvar|k}}? For instance, for the [[vertex cover problem]], the parameter can be the number of vertices in the cover. In many applications, for example when modelling error correction, one can assume the parameter to be "small" compared to the total input size. Then it is challenging to find an algorithm that is exponential ''only'' in {{mvar|k}}, and not in the input size.
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:A ''parameterized problem'' is a language <math>L \subseteq \Sigma^* \times \N</math>, where <math>\Sigma</math> is a finite alphabet. The second component is called the ''parameter'' of the problem.
:A parameterized problem {{mvar|L}} is ''fixed-parameter tractable'' if the question "<math>(x, k) \in L</math>?" can be decided in running time <math>f(k) \cdot |x|^{O(1)}</math>, where {{mvar|f}} is an arbitrary function depending only on {{mvar|k}}. The corresponding [[complexity class]] is called '''FPT'''.
:A parameterized problem uses the ''natural parameter'' when its parameter is the size of the solution to the problem.
For example, there is an algorithm that solves the vertex cover problem in <math>O(kn + 1.274^k)</math> time,<ref>{{harvnb|Chen|Kanj|Xia|2006}}</ref> where {{mvar|n}} is the number of vertices and {{mvar|k}} is the size of the vertex cover. This means that vertex cover is fixed-parameter tractable with the size of the solution as the parameter (its natural parameter). == Complexity classes ==
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The class '''FPL''' (fixed parameter linear) is the class of problems solvable in time <math>f(k) \cdot |x|</math> for some computable function {{mvar|f}}.<ref>{{harvtxt|Grohe|1999}}</ref> FPL is thus a subclass of FPT. An example is the [[Boolean satisfiability]] problem, parameterised by the number of variables. A given formula of size {{mvar|m}} with {{mvar|k}} variables can be checked by brute force in time <math>O(2^km)</math>. A [[vertex cover]] of size {{mvar|k}} in a graph of order {{mvar|n}} can be found in time <math>O(2^kn)</math>, so the vertex cover problem is also in FPL.
An example of a problem that is thought not to be in FPT is [[graph coloring]] parameterised by the number of colors. It is known that 3-coloring is [[NP-hard]], and an algorithm for graph {{mvar|k}}-
There are a number of alternative definitions of FPT. For example, the running-time requirement can be replaced by <math>f(k) + |x|^{O(1)}</math>. Also, a parameterised problem is in FPT if it has a so-called kernel. [[Kernelization]] is a preprocessing technique that reduces the original instance to its "hard kernel", a possibly much smaller instance that is equivalent to the original instance but has a size that is bounded by a function in the parameter.
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=== ''W'' hierarchy ===
The '''''W'' hierarchy''' is a collection of computational complexity classes. A parameterized problem is in the class ''W''[''i''], if every instance <math>(x, k)</math> can be transformed (in fpt-time) to a combinatorial circuit that has [[weft (circuit)|weft]] at most ''i'', such that <math>(x, k)\in L</math> if and only if there is a satisfying assignment to the inputs that assigns
Note that <math>\mathsf{FPT} = W[0]</math> and <math>W[i] \subseteq W[j]</math> for all <math>i\le j</math>. The classes in the ''W'' hierarchy are also closed under fpt-reduction.
A complete problem for ''W''[''i''] is '''Weighted ''i''-Normalized Satisfiability''':<ref>{{cite journal |last1=Downey |first1=Rod G. |last2=Fellows |first2=Michael R. |title=Fixed-Parameter Tractability and Completeness I: Basic Results |journal=SIAM Journal on Computing |date=August 1995 |volume=24 |issue=4 |pages=873–921 |doi=10.1137/S0097539792228228 |url=https://doi.org/10.1137/S0097539792228228 |language=en |issn=0097-5397|url-access=subscription }}</ref> given a Boolean formula written as an AND of ORs of ANDs of ... of possibly negated variables, with <math>i+1</math> layers of ANDs or ORs (and ''i'' alternations between AND and OR), can it be satisfied by setting exactly ''k'' variables to 1?
Many natural computational problems occupy the lower levels, ''W''[1] and ''W''[2].
==== ''W''[1] ====
{{Redirect|W(1)|the mathematical constant|omega constant}}
Examples of ''W''[1]-complete problems include
* deciding if a given graph contains a [[Clique (graph theory)|clique]] of size ''k''
* deciding if a given graph contains an [[Independent set (graph theory)|independent set]] of size ''k''
* deciding if a given nondeterministic single-tape Turing machine accepts within ''k'' steps ("short Turing machine acceptance" problem). This also applies to nondeterministic [[Turing machine|Turing machines]] with ''f''(''k'') tapes and even ''f''(''k'') of ''f''(''k'')-dimensional tapes, but even with this extension, the restriction to ''f''(''k'') tape alphabet size is fixed-parameter tractable. Crucially, the branching of the Turing machine at each step is allowed to depend on ''n'', the size of the input. In this way, the Turing machine may explore ''n''<sup>O(''k'')</sup> computation paths.
==== ''W''[2] ====
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=== XP ===
'''XP''' is the class of parameterized problems that can be solved in time <math>n^{f(k)}</math> for some computable function {{mvar|f}}. These problems are called [[slicewise]] polynomial, in the sense that each "slice" of fixed k has a polynomial algorithm, although possibly with a different exponent for each k. Compare this with FPT, which merely allows a different constant prefactor for each value of k. XP contains FPT, and it is known that this containment is strict by diagonalization.
=== para-NP ===
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== References ==
* {{cite
|first1 = Jianer
|last1 = Chen
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|last3 = Xia
|title = Improved Parameterized Upper Bounds for Vertex Cover
|
|publisher = Springer
|publication-place = Berlin, Heidelberg
|volume = 4162▼
|pages = 238–249
|year = 2006
|doi = 10.1007/11821069_21
▲|volume = 4162
|isbn = 978-3-540-37791-7
|citeseerx = 10.1.1.432.831
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|isbn=978-1107057760
|doi=10.1017/9781107415157
|page=528
}}
*{{cite book
|last1=Gurevich|first1=Yuri
|