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NP-completeness

In computational complexity theory, a problem is NP-complete when:

  1. It is a decision problem, meaning that for any input to the problem, the output is either "yes" or "no".
  2. When the answer is "yes", this can be demonstrated through the existence of a short (polynomial length) solution.
  3. The correctness of each solution can be verified quickly (namely, in polynomial time) and a brute-force search algorithm can find a solution by trying all possible solutions.
  4. The problem can be used to simulate every other problem for which we can verify quickly that a solution is correct. In this sense, NP-complete problems are the hardest of the problems to which solutions can be verified quickly. If we could find solutions of some NP-complete problem quickly, we could quickly find the solutions of every other problem to which a given solution can be easily verified.
The Boolean satisfiability problem (SAT) asks to determine if a propositional formula (example depicted) can be made true by an appropriate assignment ("solution") of truth values to its variables. While it is easy to verify whether a given assignment renders the formula true,[1] no essentially faster method to find a satisfying assignment is known than to try all assignments in succession. Cook and Levin proved that each easy-to-verify problem can be solved as fast as SAT, which is hence NP-complete.

The name "NP-complete" is short for "nondeterministic polynomial-time complete". In this name, "nondeterministic" refers to nondeterministic Turing machines, a way of mathematically formalizing the idea of a brute-force search algorithm. Polynomial time refers to an amount of time that is considered "quick" for a deterministic algorithm to check a single solution, or for a nondeterministic Turing machine to perform the whole search. "Complete" refers to the property of being able to simulate everything in the same complexity class.

More precisely, each input to the problem should be associated with a set of solutions of polynomial length, the validity of each of which can be tested quickly (in polynomial time),[2] such that the output for any input is "yes" if the solution set is non-empty and "no" if it is empty. The complexity class of problems of this form is called NP, an abbreviation for "nondeterministic polynomial time". A problem is said to be NP-hard if everything in NP can be transformed in polynomial time into it even though it may not be in NP. A problem is NP-complete if it is both in NP and NP-hard. The NP-complete problems represent the hardest problems in NP. If some NP-complete problem has a polynomial time algorithm, all problems in NP do. The set of NP-complete problems is often denoted by NP-C or NPC.

Although a solution to an NP-complete problem can be verified "quickly", there is no known way to find a solution quickly. That is, the time required to solve the problem using any currently known algorithm increases rapidly as the size of the problem grows. As a consequence, determining whether it is possible to solve these problems quickly, called the P versus NP problem, is one of the fundamental unsolved problems in computer science today.

While a method for computing the solutions to NP-complete problems quickly remains undiscovered, computer scientists and programmers still frequently encounter NP-complete problems. NP-complete problems are often addressed by using heuristic methods and approximation algorithms.

Overview edit

NP-complete problems are in NP, the set of all decision problems whose solutions can be verified in polynomial time; NP may be equivalently defined as the set of decision problems that can be solved in polynomial time on a non-deterministic Turing machine. A problem p in NP is NP-complete if every other problem in NP can be transformed (or reduced) into p in polynomial time.[citation needed]

It is not known whether every problem in NP can be quickly solved—this is called the P versus NP problem. But if any NP-complete problem can be solved quickly, then every problem in NP can, because the definition of an NP-complete problem states that every problem in NP must be quickly reducible to every NP-complete problem (that is, it can be reduced in polynomial time). Because of this, it is often said that NP-complete problems are harder or more difficult than NP problems in general.[citation needed]

Formal definition edit

A decision problem   is NP-complete if:[citation needed]

  1.   is in NP, and
  2. Every problem in NP is reducible to   in polynomial time.[3]

  can be shown to be in NP by demonstrating that a candidate solution to   can be verified in polynomial time.

Note that a problem satisfying condition 2 is said to be NP-hard, whether or not it satisfies condition 1.[4]

A consequence of this definition is that if we had a polynomial time algorithm (on a UTM, or any other Turing-equivalent abstract machine) for  , we could solve all problems in NP in polynomial time.

Background edit

 
Euler diagram for P, NP, NP-complete, and NP-hard sets of problems. The left side is valid under the assumption that P≠NP, while the right side is valid under the assumption that P=NP (except that the empty language and its complement are never NP-complete, and in general, not every problem in P or NP is NP-complete).

The concept of NP-completeness was introduced in 1971 (see Cook–Levin theorem), though the term NP-complete was introduced later. At the 1971 STOC conference, there was a fierce debate between the computer scientists about whether NP-complete problems could be solved in polynomial time on a deterministic Turing machine. John Hopcroft brought everyone at the conference to a consensus that the question of whether NP-complete problems are solvable in polynomial time should be put off to be solved at some later date, since nobody had any formal proofs for their claims one way or the other. This is known as "the question of whether P=NP".

Nobody has yet been able to determine conclusively whether NP-complete problems are in fact solvable in polynomial time, making this one of the great unsolved problems of mathematics. The Clay Mathematics Institute is offering a US$1 million reward to anyone who has a formal proof that P=NP or that P≠NP.[5]

The existence of NP-complete problems is not obvious. The Cook–Levin theorem states that the Boolean satisfiability problem is NP-complete, thus establishing that such problems do exist. In 1972, Richard Karp proved that several other problems were also NP-complete (see Karp's 21 NP-complete problems); thus, there is a class of NP-complete problems (besides the Boolean satisfiability problem). Since the original results, thousands of other problems have been shown to be NP-complete by reductions from other problems previously shown to be NP-complete; many of these problems are collected in Garey & Johnson (1979).

NP-complete problems edit

 
Some NP-complete problems, indicating the reductions typically used to prove their NP-completeness

The easiest way to prove that some new problem is NP-complete is first to prove that it is in NP, and then to reduce some known NP-complete problem to it. Therefore, it is useful to know a variety of NP-complete problems. The list below contains some well-known problems that are NP-complete when expressed as decision problems.

To the right is a diagram of some of the problems and the reductions typically used to prove their NP-completeness. In this diagram, problems are reduced from bottom to top. Note that this diagram is misleading as a description of the mathematical relationship between these problems, as there exists a polynomial-time reduction between any two NP-complete problems; but it indicates where demonstrating this polynomial-time reduction has been easiest.

There is often only a small difference between a problem in P and an NP-complete problem. For example, the 3-satisfiability problem, a restriction of the Boolean satisfiability problem, remains NP-complete, whereas the slightly more restricted 2-satisfiability problem is in P (specifically, it is NL-complete), but the slightly more general max. 2-sat. problem is again NP-complete. Determining whether a graph can be colored with 2 colors is in P, but with 3 colors is NP-complete, even when restricted to planar graphs. Determining if a graph is a cycle or is bipartite is very easy (in L), but finding a maximum bipartite or a maximum cycle subgraph is NP-complete. A solution of the knapsack problem within any fixed percentage of the optimal solution can be computed in polynomial time, but finding the optimal solution is NP-complete.

Intermediate problems edit

An interesting example is the graph isomorphism problem, the graph theory problem of determining whether a graph isomorphism exists between two graphs. Two graphs are isomorphic if one can be transformed into the other simply by renaming vertices. Consider these two problems:

  • Graph Isomorphism: Is graph G1 isomorphic to graph G2?
  • Subgraph Isomorphism: Is graph G1 isomorphic to a subgraph of graph G2?

The Subgraph Isomorphism problem is NP-complete. The graph isomorphism problem is suspected to be neither in P nor NP-complete, though it is in NP. This is an example of a problem that is thought to be hard, but is not thought to be NP-complete. This class is called NP-Intermediate problems and exists if and only if P≠NP.

Solving NP-complete problems edit

At present, all known algorithms for NP-complete problems require time that is superpolynomial in the input size. The vertex cover problem has  [6] for some   and it is unknown whether there are any faster algorithms.

The following techniques can be applied to solve computational problems in general, and they often give rise to substantially faster algorithms:

  • Approximation: Instead of searching for an optimal solution, search for a solution that is at most a factor from an optimal one.
  • Randomization: Use randomness to get a faster average running time, and allow the algorithm to fail with some small probability. Note: The Monte Carlo method is not an example of an efficient algorithm in this specific sense, although evolutionary approaches like Genetic algorithms may be.
  • Restriction: By restricting the structure of the input (e.g., to planar graphs), faster algorithms are usually possible.
  • Parameterization: Often there are fast algorithms if certain parameters of the input are fixed.
  • Heuristic: An algorithm that works "reasonably well" in many cases, but for which there is no proof that it is both always fast and always produces a good result. Metaheuristic approaches are often used.

One example of a heuristic algorithm is a suboptimal   greedy coloring algorithm used for graph coloring during the register allocation phase of some compilers, a technique called graph-coloring global register allocation. Each vertex is a variable, edges are drawn between variables which are being used at the same time, and colors indicate the register assigned to each variable. Because most RISC machines have a fairly large number of general-purpose registers, even a heuristic approach is effective for this application.

Completeness under different types of reduction edit

In the definition of NP-complete given above, the term reduction was used in the technical meaning of a polynomial-time many-one reduction.

Another type of reduction is polynomial-time Turing reduction. A problem   is polynomial-time Turing-reducible to a problem   if, given a subroutine that solves   in polynomial time, one could write a program that calls this subroutine and solves   in polynomial time. This contrasts with many-one reducibility, which has the restriction that the program can only call the subroutine once, and the return value of the subroutine must be the return value of the program.

If one defines the analogue to NP-complete with Turing reductions instead of many-one reductions, the resulting set of problems won't be smaller than NP-complete; it is an open question whether it will be any larger.

Another type of reduction that is also often used to define NP-completeness is the logarithmic-space many-one reduction which is a many-one reduction that can be computed with only a logarithmic amount of space. Since every computation that can be done in logarithmic space can also be done in polynomial time it follows that if there is a logarithmic-space many-one reduction then there is also a polynomial-time many-one reduction. This type of reduction is more refined than the more usual polynomial-time many-one reductions and it allows us to distinguish more classes such as P-complete. Whether under these types of reductions the definition of NP-complete changes is still an open problem. All currently known NP-complete problems are NP-complete under log space reductions. All currently known NP-complete problems remain NP-complete even under much weaker reductions such as   reductions and   reductions. Some NP-Complete problems such as SAT are known to be complete even under polylogarithmic time projections.[7] It is known, however, that AC0 reductions define a strictly smaller class than polynomial-time reductions.[8]

Naming edit

According to Donald Knuth, the name "NP-complete" was popularized by Alfred Aho, John Hopcroft and Jeffrey Ullman in their celebrated textbook "The Design and Analysis of Computer Algorithms". He reports that they introduced the change in the galley proofs for the book (from "polynomially-complete"), in accordance with the results of a poll he had conducted of the theoretical computer science community.[9] Other suggestions made in the poll[10] included "Herculean", "formidable", Steiglitz's "hard-boiled" in honor of Cook, and Shen Lin's acronym "PET", which stood for "probably exponential time", but depending on which way the P versus NP problem went, could stand for "provably exponential time" or "previously exponential time".[11]

Common misconceptions edit

The following misconceptions are frequent.[12]

  • "NP-complete problems are the most difficult known problems." Since NP-complete problems are in NP, their running time is at most exponential. However, some problems have been proven to require more time, for example Presburger arithmetic. Of some problems, it has even been proven that they can never be solved at all, for example the halting problem.
  • "NP-complete problems are difficult because there are so many different solutions." On the one hand, there are many problems that have a solution space just as large, but can be solved in polynomial time (for example minimum spanning tree). On the other hand, there are NP-problems with at most one solution that are NP-hard under randomized polynomial-time reduction (see Valiant–Vazirani theorem).
  • "Solving NP-complete problems requires exponential time." First, this would imply P ≠ NP, which is still an unsolved question. Further, some NP-complete problems actually have algorithms running in superpolynomial, but subexponential time such as O(2nn). For example, the independent set and dominating set problems for planar graphs are NP-complete, but can be solved in subexponential time using the planar separator theorem.[13]
  • "Each instance of an NP-complete problem is difficult." Often some instances, or even most instances, may be easy to solve within polynomial time. However, unless P=NP, any polynomial-time algorithm must asymptotically be wrong on more than polynomially many of the exponentially many inputs of a certain size.[14]
  • "If P=NP, all cryptographic ciphers can be broken." A polynomial-time problem can be very difficult to solve in practice if the polynomial's degree or constants are large enough. In addition, information-theoretic security provides cryptographic methods that cannot be broken even with unlimited computing power.
  • "A large-scale quantum computer would be able to efficiently solve NP-complete problems." The class of decision problems that can be efficiently solved (in principle) by a fault-tolerant quantum computer is known as BQP. However, BQP is not believed to contain all of NP, and if it does not, then it cannot contain any NP-complete problem.[15]

Properties edit

Viewing a decision problem as a formal language in some fixed encoding, the set NPC of all NP-complete problems is not closed under:

It is not known whether NPC is closed under complementation, since NPC=co-NPC if and only if NP=co-NP, and since NP=co-NP is an open question.[16]

See also edit

References edit

Citations edit

  1. ^ For example, simply assigning true to each variable renders the 18th conjunct   (and hence the complete formula) false.
  2. ^ Cobham, Alan (1965). "The intrinsic computational difficulty of functions". Proc. Logic, Methodology, and Philosophy of Science II. North Holland.
  3. ^ J. van Leeuwen (1998). Handbook of Theoretical Computer Science. Elsevier. p. 84. ISBN 978-0-262-72014-4.
  4. ^ J. van Leeuwen (1998). Handbook of Theoretical Computer Science. Elsevier. p. 80. ISBN 978-0-262-72014-4.
  5. ^ Kiersz, Andy. "An eminent mathematician claims to have solved one of math's greatest mysteries — and it's one of 6 problems with a $1 million prize". Business Insider. Retrieved 2023-04-24.
  6. ^ Chen, Jianer; Kanj, Iyad A.; Xia, Ge (2010-09-06). "Improved upper bounds for vertex cover". Theoretical Computer Science. 411 (40): 3736–3756. doi:10.1016/j.tcs.2010.06.026. ISSN 0304-3975.
  7. ^ Agrawal, M.; Allender, E.; Rudich, Steven (1998). "Reductions in Circuit Complexity: An Isomorphism Theorem and a Gap Theorem". Journal of Computer and System Sciences. 57 (2): 127–143. doi:10.1006/jcss.1998.1583. ISSN 1090-2724.
  8. ^ Agrawal, M.; Allender, E.; Impagliazzo, R.; Pitassi, T.; Rudich, Steven (2001). "Reducing the complexity of reductions". Computational Complexity. 10 (2): 117–138. doi:10.1007/s00037-001-8191-1. ISSN 1016-3328. S2CID 29017219.
  9. ^ Don Knuth, Tracy Larrabee, and Paul M. Roberts, Mathematical Writing 2010-08-27 at the Wayback Machine § 25, MAA Notes No. 14, MAA, 1989 (also Stanford Technical Report, 1987).
  10. ^ Knuth, D. F. (1974). "A terminological proposal". SIGACT News. 6 (1): 12–18. doi:10.1145/1811129.1811130. S2CID 45313676.
  11. ^ See the poll, or [1] 2011-06-07 at the Wayback Machine.
  12. ^ Ball, Philip (2000). "DNA computer helps travelling salesman". Nature. doi:10.1038/news000113-10.
  13. ^ Bern (1990); Deĭneko, Klinz & Woeginger (2006); Dorn et al. (2005); Lipton & Tarjan (1980).
  14. ^ Hemaspaandra, L. A.; Williams, R. (2012). "SIGACT News Complexity Theory Column 76". ACM SIGACT News. 43 (4): 70. doi:10.1145/2421119.2421135. S2CID 13367514.
  15. ^ Aaronson, Scott (2010). "BQP and the polynomial hierarchy". In Schulman, Leonard J. (ed.). Proceedings of the 42nd ACM Symposium on Theory of Computing, STOC 2010, Cambridge, Massachusetts, USA, 5–8 June 2010. Association for Computing Machinery. pp. 141–150. arXiv:0910.4698. doi:10.1145/1806689.1806711. ISBN 978-1-4503-0050-6.
  16. ^ Talbot, John; Welsh, D. J. A. (2006), Complexity and Cryptography: An Introduction, Cambridge University Press, p. 57, ISBN 9780521617710, The question of whether NP and co-NP are equal is probably the second most important open problem in complexity theory, after the P versus NP question.

Sources edit

  • Garey, Michael R.; Johnson, David S. (1979). Computers and Intractability: A Guide to the Theory of NP-Completeness. Series of Books in the Mathematical Sciences (1st ed.). New York: W. H. Freeman and Company. ISBN 9780716710455. MR 0519066. OCLC 247570676. This book is a classic, developing the theory, then cataloguing many NP-Complete problems.
  • Cook, S.A. (1971). "The complexity of theorem proving procedures". Proceedings, Third Annual ACM Symposium on the Theory of Computing, ACM, New York. pp. 151–158. doi:10.1145/800157.805047.
  • Dunne, P.E. "An annotated list of selected NP-complete problems". COMP202, Dept. of Computer Science, University of Liverpool. Retrieved 2008-06-21.
  • Crescenzi, P.; Kann, V.; Halldórsson, M.; Karpinski, M.; Woeginger, G. "A compendium of NP optimization problems". KTH, Stockholm. Retrieved 2020-10-24.
  • Dahlke, K. "NP-complete problems". Math Reference Project. Retrieved 2008-06-21.
  • Karlsson, R. (PDF). Dept. of Computer Science, Lund University, Sweden. Archived from the original (PDF) on April 19, 2009. Retrieved 2008-06-21.
  • Sun, H.M. . Information Security Laboratory, Dept. of Computer Science, National Tsing Hua University, Hsinchu City, Taiwan. Archived from the original (PPT) on 2009-09-02. Retrieved 2008-06-21.
  • Jiang, J.R. "The theory of NP-completeness" (PPT). Dept. of Computer Science and Information Engineering, National Central University, Jhongli City, Taiwan. Retrieved 2008-06-21.
  • Cormen, T.H.; Leiserson, C.E.; Rivest, R.L.; Stein, C. (2001). "Chapter 34: NP–Completeness". Introduction to Algorithms (2nd ed.). MIT Press and McGraw-Hill. pp. 966–1021. ISBN 978-0-262-03293-3.
  • Sipser, M. (1997). "Sections 7.4–7.5 (NP-completeness, Additional NP-complete Problems)". Introduction to the Theory of Computation. PWS Publishing. pp. 248–271. ISBN 978-0-534-94728-6.
  • Papadimitriou, C. (1994). "Chapter 9 (NP-complete problems)". Computational Complexity (1st ed.). Addison Wesley. pp. 181–218. ISBN 978-0-201-53082-7.
  • Computational Complexity of Games and Puzzles
  • Tetris is Hard, Even to Approximate
  • Bern, Marshall (1990). "Faster exact algorithms for Steiner trees in planar networks". Networks. 20 (1): 109–120. doi:10.1002/net.3230200110..
  • Deĭneko, Vladimir G.; Klinz, Bettina; Woeginger, Gerhard J. (2006). "Exact algorithms for the Hamiltonian cycle problem in planar graphs". Operations Research Letters. 34 (3): 269–274. doi:10.1016/j.orl.2005.04.013..
  • Dorn, Frederic; Penninkx, Eelko; Bodlaender, Hans L.; Fomin, Fedor V. (2005). "Efficient Exact Algorithms on Planar Graphs: Exploiting Sphere Cut Branch Decompositions". Proc. 13th European Symposium on Algorithms (ESA '05). Lecture Notes in Computer Science. Vol. 3669. Springer-Verlag. pp. 95–106. doi:10.1007/11561071_11. ISBN 978-3-540-29118-3..
  • Lipton, Richard J.; Tarjan, Robert E. (1980). "Applications of a planar separator theorem". SIAM Journal on Computing. 9 (3): 615–627. doi:10.1137/0209046. S2CID 12961628..

Further reading edit

  • Scott Aaronson, NP-complete Problems and Physical Reality, ACM SIGACT News, Vol. 36, No. 1. (March 2005), pp. 30–52.
  • Lance Fortnow, The status of the P versus NP problem, Commun. ACM, Vol. 52, No. 9. (2009), pp. 78–86.

completeness, this, article, confusing, unclear, readers, please, help, clarify, article, there, might, discussion, about, this, talk, page, july, 2012, learn, when, remove, this, message, computational, complexity, theory, problem, complete, when, decision, p. This article may be confusing or unclear to readers Please help clarify the article There might be a discussion about this on the talk page July 2012 Learn how and when to remove this message In computational complexity theory a problem is NP complete when It is a decision problem meaning that for any input to the problem the output is either yes or no When the answer is yes this can be demonstrated through the existence of a short polynomial length solution The correctness of each solution can be verified quickly namely in polynomial time and a brute force search algorithm can find a solution by trying all possible solutions The problem can be used to simulate every other problem for which we can verify quickly that a solution is correct In this sense NP complete problems are the hardest of the problems to which solutions can be verified quickly If we could find solutions of some NP complete problem quickly we could quickly find the solutions of every other problem to which a given solution can be easily verified The Boolean satisfiability problem SAT asks to determine if a propositional formula example depicted can be made true by an appropriate assignment solution of truth values to its variables While it is easy to verify whether a given assignment renders the formula true 1 no essentially faster method to find a satisfying assignment is known than to try all assignments in succession Cook and Levin proved that each easy to verify problem can be solved as fast as SAT which is hence NP complete The name NP complete is short for nondeterministic polynomial time complete In this name nondeterministic refers to nondeterministic Turing machines a way of mathematically formalizing the idea of a brute force search algorithm Polynomial time refers to an amount of time that is considered quick for a deterministic algorithm to check a single solution or for a nondeterministic Turing machine to perform the whole search Complete refers to the property of being able to simulate everything in the same complexity class More precisely each input to the problem should be associated with a set of solutions of polynomial length the validity of each of which can be tested quickly in polynomial time 2 such that the output for any input is yes if the solution set is non empty and no if it is empty The complexity class of problems of this form is called NP an abbreviation for nondeterministic polynomial time A problem is said to be NP hard if everything in NP can be transformed in polynomial time into it even though it may not be in NP A problem is NP complete if it is both in NP and NP hard The NP complete problems represent the hardest problems in NP If some NP complete problem has a polynomial time algorithm all problems in NP do The set of NP complete problems is often denoted by NP C or NPC Although a solution to an NP complete problem can be verified quickly there is no known way to find a solution quickly That is the time required to solve the problem using any currently known algorithm increases rapidly as the size of the problem grows As a consequence determining whether it is possible to solve these problems quickly called the P versus NP problem is one of the fundamental unsolved problems in computer science today While a method for computing the solutions to NP complete problems quickly remains undiscovered computer scientists and programmers still frequently encounter NP complete problems NP complete problems are often addressed by using heuristic methods and approximation algorithms Contents 1 Overview 2 Formal definition 3 Background 4 NP complete problems 4 1 Intermediate problems 5 Solving NP complete problems 6 Completeness under different types of reduction 7 Naming 8 Common misconceptions 9 Properties 10 See also 11 References 11 1 Citations 11 2 Sources 12 Further readingOverview editNP complete problems are in NP the set of all decision problems whose solutions can be verified in polynomial time NP may be equivalently defined as the set of decision problems that can be solved in polynomial time on a non deterministic Turing machine A problem p in NP is NP complete if every other problem in NP can be transformed or reduced into p in polynomial time citation needed It is not known whether every problem in NP can be quickly solved this is called the P versus NP problem But if any NP complete problem can be solved quickly then every problem in NP can because the definition of an NP complete problem states that every problem in NP must be quickly reducible to every NP complete problem that is it can be reduced in polynomial time Because of this it is often said that NP complete problems are harder or more difficult than NP problems in general citation needed Formal definition editSee also formal definition for NP completeness article P NP A decision problem C displaystyle scriptstyle C nbsp is NP complete if citation needed C displaystyle scriptstyle C nbsp is in NP and Every problem in NP is reducible to C displaystyle scriptstyle C nbsp in polynomial time 3 C displaystyle scriptstyle C nbsp can be shown to be in NP by demonstrating that a candidate solution to C displaystyle scriptstyle C nbsp can be verified in polynomial time Note that a problem satisfying condition 2 is said to be NP hard whether or not it satisfies condition 1 4 A consequence of this definition is that if we had a polynomial time algorithm on a UTM or any other Turing equivalent abstract machine for C displaystyle scriptstyle C nbsp we could solve all problems in NP in polynomial time Background edit nbsp Euler diagram for P NP NP complete and NP hard sets of problems The left side is valid under the assumption that P NP while the right side is valid under the assumption that P NP except that the empty language and its complement are never NP complete and in general not every problem in P or NP is NP complete The concept of NP completeness was introduced in 1971 see Cook Levin theorem though the term NP complete was introduced later At the 1971 STOC conference there was a fierce debate between the computer scientists about whether NP complete problems could be solved in polynomial time on a deterministic Turing machine John Hopcroft brought everyone at the conference to a consensus that the question of whether NP complete problems are solvable in polynomial time should be put off to be solved at some later date since nobody had any formal proofs for their claims one way or the other This is known as the question of whether P NP Nobody has yet been able to determine conclusively whether NP complete problems are in fact solvable in polynomial time making this one of the great unsolved problems of mathematics The Clay Mathematics Institute is offering a US 1 million reward to anyone who has a formal proof that P NP or that P NP 5 The existence of NP complete problems is not obvious The Cook Levin theorem states that the Boolean satisfiability problem is NP complete thus establishing that such problems do exist In 1972 Richard Karp proved that several other problems were also NP complete see Karp s 21 NP complete problems thus there is a class of NP complete problems besides the Boolean satisfiability problem Since the original results thousands of other problems have been shown to be NP complete by reductions from other problems previously shown to be NP complete many of these problems are collected in Garey amp Johnson 1979 NP complete problems edit nbsp Some NP complete problems indicating the reductions typically used to prove their NP completeness Main article List of NP complete problems The easiest way to prove that some new problem is NP complete is first to prove that it is in NP and then to reduce some known NP complete problem to it Therefore it is useful to know a variety of NP complete problems The list below contains some well known problems that are NP complete when expressed as decision problems Boolean satisfiability problem SAT Knapsack problem Hamiltonian path problem Travelling salesman problem decision version Subgraph isomorphism problem Subset sum problem Clique problem Vertex cover problem Independent set problem Dominating set problem Graph coloring problem To the right is a diagram of some of the problems and the reductions typically used to prove their NP completeness In this diagram problems are reduced from bottom to top Note that this diagram is misleading as a description of the mathematical relationship between these problems as there exists a polynomial time reduction between any two NP complete problems but it indicates where demonstrating this polynomial time reduction has been easiest There is often only a small difference between a problem in P and an NP complete problem For example the 3 satisfiability problem a restriction of the Boolean satisfiability problem remains NP complete whereas the slightly more restricted 2 satisfiability problem is in P specifically it is NL complete but the slightly more general max 2 sat problem is again NP complete Determining whether a graph can be colored with 2 colors is in P but with 3 colors is NP complete even when restricted to planar graphs Determining if a graph is a cycle or is bipartite is very easy in L but finding a maximum bipartite or a maximum cycle subgraph is NP complete A solution of the knapsack problem within any fixed percentage of the optimal solution can be computed in polynomial time but finding the optimal solution is NP complete Intermediate problems edit An interesting example is the graph isomorphism problem the graph theory problem of determining whether a graph isomorphism exists between two graphs Two graphs are isomorphic if one can be transformed into the other simply by renaming vertices Consider these two problems Graph Isomorphism Is graph G1 isomorphic to graph G2 Subgraph Isomorphism Is graph G1 isomorphic to a subgraph of graph G2 The Subgraph Isomorphism problem is NP complete The graph isomorphism problem is suspected to be neither in P nor NP complete though it is in NP This is an example of a problem that is thought to be hard but is not thought to be NP complete This class is called NP Intermediate problems and exists if and only if P NP Solving NP complete problems editAt present all known algorithms for NP complete problems require time that is superpolynomial in the input size The vertex cover problem has O 1 2738 k n k displaystyle O 1 2738 k nk nbsp 6 for some k gt 0 displaystyle k gt 0 nbsp and it is unknown whether there are any faster algorithms The following techniques can be applied to solve computational problems in general and they often give rise to substantially faster algorithms Approximation Instead of searching for an optimal solution search for a solution that is at most a factor from an optimal one Randomization Use randomness to get a faster average running time and allow the algorithm to fail with some small probability Note The Monte Carlo method is not an example of an efficient algorithm in this specific sense although evolutionary approaches like Genetic algorithms may be Restriction By restricting the structure of the input e g to planar graphs faster algorithms are usually possible Parameterization Often there are fast algorithms if certain parameters of the input are fixed Heuristic An algorithm that works reasonably well in many cases but for which there is no proof that it is both always fast and always produces a good result Metaheuristic approaches are often used One example of a heuristic algorithm is a suboptimal O n log n displaystyle O n log n nbsp greedy coloring algorithm used for graph coloring during the register allocation phase of some compilers a technique called graph coloring global register allocation Each vertex is a variable edges are drawn between variables which are being used at the same time and colors indicate the register assigned to each variable Because most RISC machines have a fairly large number of general purpose registers even a heuristic approach is effective for this application Completeness under different types of reduction editIn the definition of NP complete given above the term reduction was used in the technical meaning of a polynomial time many one reduction Another type of reduction is polynomial time Turing reduction A problem X displaystyle scriptstyle X nbsp is polynomial time Turing reducible to a problem Y displaystyle scriptstyle Y nbsp if given a subroutine that solves Y displaystyle scriptstyle Y nbsp in polynomial time one could write a program that calls this subroutine and solves X displaystyle scriptstyle X nbsp in polynomial time This contrasts with many one reducibility which has the restriction that the program can only call the subroutine once and the return value of the subroutine must be the return value of the program If one defines the analogue to NP complete with Turing reductions instead of many one reductions the resulting set of problems won t be smaller than NP complete it is an open question whether it will be any larger Another type of reduction that is also often used to define NP completeness is the logarithmic space many one reduction which is a many one reduction that can be computed with only a logarithmic amount of space Since every computation that can be done in logarithmic space can also be done in polynomial time it follows that if there is a logarithmic space many one reduction then there is also a polynomial time many one reduction This type of reduction is more refined than the more usual polynomial time many one reductions and it allows us to distinguish more classes such as P complete Whether under these types of reductions the definition of NP complete changes is still an open problem All currently known NP complete problems are NP complete under log space reductions All currently known NP complete problems remain NP complete even under much weaker reductions such as A C 0 displaystyle AC 0 nbsp reductions and N C 0 displaystyle NC 0 nbsp reductions Some NP Complete problems such as SAT are known to be complete even under polylogarithmic time projections 7 It is known however that AC0 reductions define a strictly smaller class than polynomial time reductions 8 Naming editAccording to Donald Knuth the name NP complete was popularized by Alfred Aho John Hopcroft and Jeffrey Ullman in their celebrated textbook The Design and Analysis of Computer Algorithms He reports that they introduced the change in the galley proofs for the book from polynomially complete in accordance with the results of a poll he had conducted of the theoretical computer science community 9 Other suggestions made in the poll 10 included Herculean formidable Steiglitz s hard boiled in honor of Cook and Shen Lin s acronym PET which stood for probably exponential time but depending on which way the P versus NP problem went could stand for provably exponential time or previously exponential time 11 Common misconceptions editThe following misconceptions are frequent 12 NP complete problems are the most difficult known problems Since NP complete problems are in NP their running time is at most exponential However some problems have been proven to require more time for example Presburger arithmetic Of some problems it has even been proven that they can never be solved at all for example the halting problem NP complete problems are difficult because there are so many different solutions On the one hand there are many problems that have a solution space just as large but can be solved in polynomial time for example minimum spanning tree On the other hand there are NP problems with at most one solution that are NP hard under randomized polynomial time reduction see Valiant Vazirani theorem Solving NP complete problems requires exponential time First this would imply P NP which is still an unsolved question Further some NP complete problems actually have algorithms running in superpolynomial but subexponential time such as O 2 nn For example the independent set and dominating set problems for planar graphs are NP complete but can be solved in subexponential time using the planar separator theorem 13 Each instance of an NP complete problem is difficult Often some instances or even most instances may be easy to solve within polynomial time However unless P NP any polynomial time algorithm must asymptotically be wrong on more than polynomially many of the exponentially many inputs of a certain size 14 If P NP all cryptographic ciphers can be broken A polynomial time problem can be very difficult to solve in practice if the polynomial s degree or constants are large enough In addition information theoretic security provides cryptographic methods that cannot be broken even with unlimited computing power A large scale quantum computer would be able to efficiently solve NP complete problems The class of decision problems that can be efficiently solved in principle by a fault tolerant quantum computer is known as BQP However BQP is not believed to contain all of NP and if it does not then it cannot contain any NP complete problem 15 Properties editViewing a decision problem as a formal language in some fixed encoding the set NPC of all NP complete problems is not closed under union intersection concatenation Kleene star example needed It is not known whether NPC is closed under complementation since NPC co NPC if and only if NP co NP and since NP co NP is an open question 16 See also editAlmost complete Gadget computer science Ladner s theorem List of NP complete problems NP hard P NP problem Strongly NP complete Travelling Salesman 2012 film References editCitations edit For example simply assigning true to each variable renders the 18th conjunct m r s displaystyle overline m lor overline r lor overline s nbsp and hence the complete formula false Cobham Alan 1965 The intrinsic computational difficulty of functions Proc Logic Methodology and Philosophy of Science II North Holland J van Leeuwen 1998 Handbook of Theoretical Computer Science Elsevier p 84 ISBN 978 0 262 72014 4 J van Leeuwen 1998 Handbook of Theoretical Computer Science Elsevier p 80 ISBN 978 0 262 72014 4 Kiersz Andy An eminent mathematician claims to have solved one of math s greatest mysteries and it s one of 6 problems with a 1 million prize Business Insider Retrieved 2023 04 24 Chen Jianer Kanj Iyad A Xia Ge 2010 09 06 Improved upper bounds for vertex cover Theoretical Computer Science 411 40 3736 3756 doi 10 1016 j tcs 2010 06 026 ISSN 0304 3975 Agrawal M Allender E Rudich Steven 1998 Reductions in Circuit Complexity An Isomorphism Theorem and a Gap Theorem Journal of Computer and System Sciences 57 2 127 143 doi 10 1006 jcss 1998 1583 ISSN 1090 2724 Agrawal M Allender E Impagliazzo R Pitassi T Rudich Steven 2001 Reducing the complexity of reductions Computational Complexity 10 2 117 138 doi 10 1007 s00037 001 8191 1 ISSN 1016 3328 S2CID 29017219 Don Knuth Tracy Larrabee and Paul M Roberts Mathematical Writing Archived 2010 08 27 at the Wayback Machine 25 MAA Notes No 14 MAA 1989 also Stanford Technical Report 1987 Knuth D F 1974 A terminological proposal SIGACT News 6 1 12 18 doi 10 1145 1811129 1811130 S2CID 45313676 See the poll or 1 Archived 2011 06 07 at the Wayback Machine Ball Philip 2000 DNA computer helps travelling salesman Nature doi 10 1038 news000113 10 Bern 1990 Deĭneko Klinz amp Woeginger 2006 Dorn et al 2005 harvtxt error no target CITEREFDornPenninksBodlaenderFomin2005 help Lipton amp Tarjan 1980 Hemaspaandra L A Williams R 2012 SIGACT News Complexity Theory Column 76 ACM SIGACT News 43 4 70 doi 10 1145 2421119 2421135 S2CID 13367514 Aaronson Scott 2010 BQP and the polynomial hierarchy In Schulman Leonard J ed Proceedings of the 42nd ACM Symposium on Theory of Computing STOC 2010 Cambridge Massachusetts USA 5 8 June 2010 Association for Computing Machinery pp 141 150 arXiv 0910 4698 doi 10 1145 1806689 1806711 ISBN 978 1 4503 0050 6 Talbot John Welsh D J A 2006 Complexity and Cryptography An Introduction Cambridge University Press p 57 ISBN 9780521617710 The question of whether NP and co NP are equal is probably the second most important open problem in complexity theory after the P versus NP question Sources edit Garey Michael R Johnson David S 1979 Computers and Intractability A Guide to the Theory of NP Completeness Series of Books in the Mathematical Sciences 1st ed New York W H Freeman and Company ISBN 9780716710455 MR 0519066 OCLC 247570676 This book is a classic developing the theory then cataloguing many NP Complete problems Cook S A 1971 The complexity of theorem proving procedures Proceedings Third Annual ACM Symposium on the Theory of Computing ACM New York pp 151 158 doi 10 1145 800157 805047 Dunne P E An annotated list of selected NP complete problems COMP202 Dept of Computer Science University of Liverpool Retrieved 2008 06 21 Crescenzi P Kann V Halldorsson M Karpinski M Woeginger G A compendium of NP optimization problems KTH Stockholm Retrieved 2020 10 24 Dahlke K NP complete problems Math Reference Project Retrieved 2008 06 21 Karlsson R Lecture 8 NP complete problems PDF Dept of Computer Science Lund University Sweden Archived from the original PDF on April 19 2009 Retrieved 2008 06 21 Sun H M The theory of NP completeness Information Security Laboratory Dept of Computer Science National Tsing Hua University Hsinchu City Taiwan Archived from the original PPT on 2009 09 02 Retrieved 2008 06 21 Jiang J R The theory of NP completeness PPT Dept of Computer Science and Information Engineering National Central University Jhongli City Taiwan Retrieved 2008 06 21 Cormen T H Leiserson C E Rivest R L Stein C 2001 Chapter 34 NP Completeness Introduction to Algorithms 2nd ed MIT Press and McGraw Hill pp 966 1021 ISBN 978 0 262 03293 3 Sipser M 1997 Sections 7 4 7 5 NP completeness Additional NP complete Problems Introduction to the Theory of Computation PWS Publishing pp 248 271 ISBN 978 0 534 94728 6 Papadimitriou C 1994 Chapter 9 NP complete problems Computational Complexity 1st ed Addison Wesley pp 181 218 ISBN 978 0 201 53082 7 Computational Complexity of Games and Puzzles Tetris is Hard Even to Approximate Minesweeper is NP complete Bern Marshall 1990 Faster exact algorithms for Steiner trees in planar networks Networks 20 1 109 120 doi 10 1002 net 3230200110 Deĭneko Vladimir G Klinz Bettina Woeginger Gerhard J 2006 Exact algorithms for the Hamiltonian cycle problem in planar graphs Operations Research Letters 34 3 269 274 doi 10 1016 j orl 2005 04 013 Dorn Frederic Penninkx Eelko Bodlaender Hans L Fomin Fedor V 2005 Efficient Exact Algorithms on Planar Graphs Exploiting Sphere Cut Branch Decompositions Proc 13th European Symposium on Algorithms ESA 05 Lecture Notes in Computer Science Vol 3669 Springer Verlag pp 95 106 doi 10 1007 11561071 11 ISBN 978 3 540 29118 3 Lipton Richard J Tarjan Robert E 1980 Applications of a planar separator theorem SIAM Journal on Computing 9 3 615 627 doi 10 1137 0209046 S2CID 12961628 Further reading editScott Aaronson NP complete Problems and Physical Reality ACM SIGACT News Vol 36 No 1 March 2005 pp 30 52 Lance Fortnow The status of the P versus NP problem Commun ACM Vol 52 No 9 2009 pp 78 86 Retrieved from https en wikipedia org w index php title NP completeness amp oldid 1222934019, wikipedia, wiki, book, books, library,

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