HOME

TheInfoList



OR:

In
computer science Computer science is the study of computation, automation, and information. Computer science spans theoretical disciplines (such as algorithms, theory of computation, information theory, and automation) to Applied science, practical discipli ...
and
operations research Operations research ( en-GB, operational research) (U.S. Air Force Specialty Code: Operations Analysis), often shortened to the initialism OR, is a discipline that deals with the development and application of analytical methods to improve decis ...
, approximation algorithms are efficient
algorithm In mathematics and computer science, an algorithm () is a finite sequence of rigorous instructions, typically used to solve a class of specific problems or to perform a computation. Algorithms are used as specifications for performing ...
s that find approximate solutions to optimization problems (in particular
NP-hard In computational complexity theory, NP-hardness ( non-deterministic polynomial-time hardness) is the defining property of a class of problems that are informally "at least as hard as the hardest problems in NP". A simple example of an NP-hard pr ...
problems) with provable guarantees on the distance of the returned solution to the optimal one. Approximation algorithms naturally arise in the field of
theoretical computer science computer science (TCS) is a subset of general computer science and mathematics that focuses on mathematical aspects of computer science such as the theory of computation, lambda calculus, and type theory. It is difficult to circumscribe the ...
as a consequence of the widely believed P ≠ NP conjecture. Under this conjecture, a wide class of optimization problems cannot be solved exactly in
polynomial time In computer science, the time complexity is the computational complexity that describes the amount of computer time it takes to run an algorithm. Time complexity is commonly estimated by counting the number of elementary operations performed by ...
. The field of approximation algorithms, therefore, tries to understand how closely it is possible to approximate optimal solutions to such problems in polynomial time. In an overwhelming majority of the cases, the guarantee of such algorithms is a multiplicative one expressed as an approximation ratio or approximation factor i.e., the optimal solution is always guaranteed to be within a (predetermined) multiplicative factor of the returned solution. However, there are also many approximation algorithms that provide an additive guarantee on the quality of the returned solution. A notable example of an approximation algorithm that provides ''both'' is the classic approximation algorithm of Lenstra, Shmoys and Tardos for scheduling on unrelated parallel machines. The design and analysis of approximation algorithms crucially involves a mathematical proof certifying the quality of the returned solutions in the worst case. This distinguishes them from heuristics such as annealing or genetic algorithms, which find reasonably good solutions on some inputs, but provide no clear indication at the outset on when they may succeed or fail. There is widespread interest in
theoretical computer science computer science (TCS) is a subset of general computer science and mathematics that focuses on mathematical aspects of computer science such as the theory of computation, lambda calculus, and type theory. It is difficult to circumscribe the ...
to better understand the limits to which we can approximate certain famous optimization problems. For example, one of the long-standing open questions in computer science is to determine whether there is an algorithm that outperforms the 1.5 approximation algorithm of Christofides to the metric traveling salesman problem. The desire to understand hard optimization problems from the perspective of approximability is motivated by the discovery of surprising mathematical connections and broadly applicable techniques to design algorithms for hard optimization problems. One well-known example of the former is the Goemans–Williamson algorithm for
maximum cut For a graph, a maximum cut is a cut whose size is at least the size of any other cut. That is, it is a partition of the graph's vertices into two complementary sets and , such that the number of edges between and is as large as possible. ...
, which solves a graph theoretic problem using high dimensional geometry.


Introduction

A simple example of an approximation algorithm is one for the
minimum vertex cover In graph theory, a vertex cover (sometimes node cover) of a graph is a set of vertices that includes at least one endpoint of every edge of the graph. In computer science, the problem of finding a minimum vertex cover is a classical optim ...
problem, where the goal is to choose the smallest set of vertices such that every edge in the input graph contains at least one chosen vertex. One way to find a vertex cover is to repeat the following process: find an uncovered edge, add both its endpoints to the cover, and remove all edges incident to either vertex from the graph. As any vertex cover of the input graph must use a distinct vertex to cover each edge that was considered in the process (since it forms a matching), the vertex cover produced, therefore, is at most twice as large as the optimal one. In other words, this is a
constant factor approximation algorithm In computational complexity theory, the class APX (an abbreviation of "approximable") is the set of NP optimization problems that allow polynomial-time approximation algorithms with approximation ratio bounded by a constant (or constant-factor ...
with an approximation factor of 2. Under the recent unique games conjecture, this factor is even the best possible one. NP-hard problems vary greatly in their approximability; some, such as the knapsack problem, can be approximated within a multiplicative factor 1 + \epsilon, for any fixed \epsilon > 0, and therefore produce solutions arbitrarily close to the optimum (such a family of approximation algorithms is called a polynomial time approximation scheme or PTAS). Others are impossible to approximate within any constant, or even polynomial, factor unless P = NP, as in the case of the
maximum clique problem In computer science, the clique problem is the computational problem of finding cliques (subsets of vertices, all adjacent to each other, also called complete subgraphs) in a graph. It has several different formulations depending on which cli ...
. Therefore, an important benefit of studying approximation algorithms is a fine-grained classification of the difficulty of various NP-hard problems beyond the one afforded by the theory of NP-completeness. In other words, although NP-complete problems may be equivalent (under polynomial time reductions) to each other from the perspective of exact solutions, the corresponding optimization problems behave very differently from the perspective of approximate solutions.


Algorithm design techniques

By now there are several established techniques to design approximation algorithms. These include the following ones. # Greedy algorithm # Local search # Enumeration and
dynamic programming Dynamic programming is both a mathematical optimization method and a computer programming method. The method was developed by Richard Bellman in the 1950s and has found applications in numerous fields, from aerospace engineering to economics. ...
# Solving a
convex programming Convex optimization is a subfield of mathematical optimization that studies the problem of minimizing convex functions over convex sets (or, equivalently, maximizing concave functions over convex sets). Many classes of convex optimization pro ...
relaxation to get a fractional solution. Then converting this fractional solution into a feasible solution by some appropriate rounding. The popular relaxations include the following. #*
Linear programming Linear programming (LP), also called linear optimization, is a method to achieve the best outcome (such as maximum profit or lowest cost) in a mathematical model whose requirements are represented by linear relationships. Linear programming is ...
relaxations #* Semidefinite programming relaxations # Primal-dual methods # Dual fitting # Embedding the problem in some metric and then solving the problem on the metric. This is also known as metric embedding. # Random sampling and the use of randomness in general in conjunction with the methods above.


A posteriori guarantees

While approximation algorithms always provide an a priori worst case guarantee (be it additive or multiplicative), in some cases they also provide an a posteriori guarantee that is often much better. This is often the case for algorithms that work by solving a convex relaxation of the optimization problem on the given input. For example, there is a different approximation algorithm for minimum vertex cover that solves a
linear programming relaxation In mathematics, the relaxation of a (mixed) integer linear program is the problem that arises by removing the integrality constraint of each variable. For example, in a 0–1 integer program, all constraints are of the form :x_i\in\. The relax ...
to find a vertex cover that is at most twice the value of the relaxation. Since the value of the relaxation is never larger than the size of the optimal vertex cover, this yields another 2-approximation algorithm. While this is similar to the a priori guarantee of the previous approximation algorithm, the guarantee of the latter can be much better (indeed when the value of the LP relaxation is far from the size of the optimal vertex cover).


Hardness of approximation

Approximation algorithms as a research area is closely related to and informed by inapproximability theory where the non-existence of efficient algorithms with certain approximation ratios is proved (conditioned on widely believed hypotheses such as the P ≠ NP conjecture) by means of
reductions Reductions ( es, reducciones, also called ; , pl. ) were settlements created by Spanish rulers and Roman Catholic missionaries in Spanish America and the Spanish East Indies (the Philippines). In Portuguese-speaking Latin America, such r ...
. In the case of the metric traveling salesman problem, the best known inapproximability result rules out algorithms with an approximation ratio less than 123/122 ≈ 1.008196 unless P = NP, Karpinski, Lampis, Schmied. Coupled with the knowledge of the existence of Christofides' 1.5 approximation algorithm, this tells us that the threshold of approximability for metric traveling salesman (if it exists) is somewhere between 123/122 and 1.5. While inapproximability results have been proved since the 1970s, such results were obtained by ad hoc means and no systematic understanding was available at the time. It is only since the 1990 result of Feige, Goldwasser, Lovász, Safra and Szegedy on the inapproximability of Independent Set and the famous PCP theorem, that modern tools for proving inapproximability results were uncovered. The PCP theorem, for example, shows that Johnson's 1974 approximation algorithms for Max SAT, set cover, independent set and coloring all achieve the optimal approximation ratio, assuming P ≠ NP.


Practicality

Not all approximation algorithms are suitable for direct practical applications. Some involve solving non-trivial
linear programming Linear programming (LP), also called linear optimization, is a method to achieve the best outcome (such as maximum profit or lowest cost) in a mathematical model whose requirements are represented by linear relationships. Linear programming is ...
/ semidefinite relaxations (which may themselves invoke the ellipsoid algorithm), complex data structures, or sophisticated algorithmic techniques, leading to difficult implementation issues or improved running time performance (over exact algorithms) only on impractically large inputs. Implementation and running time issues aside, the guarantees provided by approximation algorithms may themselves not be strong enough to justify their consideration in practice. Despite their inability to be used "out of the box" in practical applications, the ideas and insights behind the design of such algorithms can often be incorporated in other ways in practical algorithms. In this way, the study of even very expensive algorithms is not a completely theoretical pursuit as they can yield valuable insights. In other cases, even if the initial results are of purely theoretical interest, over time, with an improved understanding, the algorithms may be refined to become more practical. One such example is the initial PTAS for Euclidean TSP by
Sanjeev Arora Sanjeev Arora (born January 1968) is an Indian American theoretical computer scientist. Life He was a visiting scholar at the Institute for Advanced Study in 2002–03. In 2008 he was inducted as a Fellow of the Association for Computing Mach ...
(and independently by Joseph Mitchell) which had a prohibitive running time of n^ for a 1+\epsilon approximation. Yet, within a year these ideas were incorporated into a near-linear time O(n\log n) algorithm for any constant \epsilon > 0.


Performance guarantees

For some approximation algorithms it is possible to prove certain properties about the approximation of the optimum result. For example, a ''ρ''-approximation algorithm ''A'' is defined to be an algorithm for which it has been proven that the value/cost, ''f''(''x''), of the approximate solution ''A''(''x'') to an instance ''x'' will not be more (or less, depending on the situation) than a factor ''ρ'' times the value, OPT, of an optimum solution. :\begin\mathrm \leq f(x) \leq \rho \mathrm,\qquad\mbox \rho > 1; \\ \rho \mathrm \leq f(x) \leq \mathrm,\qquad\mbox \rho < 1.\end The factor ''ρ'' is called the ''relative performance guarantee''. An approximation algorithm has an ''absolute performance guarantee'' or ''bounded error'' ''c'', if it has been proven for every instance ''x'' that : (\mathrm - c) \leq f(x) \leq (\mathrm + c). Similarly, the ''performance guarantee'', ''R''(''x,y''), of a solution ''y'' to an instance ''x'' is defined as :R(x,y) = \max \left ( \frac, \frac \right ), where ''f''(''y'') is the value/cost of the solution ''y'' for the instance ''x''. Clearly, the performance guarantee is greater than or equal to 1 and equal to 1 if and only if ''y'' is an optimal solution. If an algorithm ''A'' guarantees to return solutions with a performance guarantee of at most ''r''(''n''), then ''A'' is said to be an ''r''(''n'')-approximation algorithm and has an ''approximation ratio'' of ''r''(''n''). Likewise, a problem with an ''r''(''n'')-approximation algorithm is said to be r''(''n'')''-''approximable'' or have an approximation ratio of ''r''(''n''). For minimization problems, the two different guarantees provide the same result and that for maximization problems, a relative performance guarantee of ρ is equivalent to a performance guarantee of r = \rho^. In the literature, both definitions are common but it is clear which definition is used since, for maximization problems, as ρ ≤ 1 while r ≥ 1. The ''absolute performance guarantee'' \Rho_A of some approximation algorithm ''A'', where ''x'' refers to an instance of a problem, and where R_A(x) is the performance guarantee of ''A'' on ''x'' (i.e. ρ for problem instance ''x'') is: : \Rho_A = \inf \. That is to say that \Rho_A is the largest bound on the approximation ratio, ''r'', that one sees over all possible instances of the problem. Likewise, the ''asymptotic performance ratio'' R_A^\infty is: : R_A^\infty = \inf \. That is to say that it is the same as the ''absolute performance ratio'', with a lower bound ''n'' on the size of problem instances. These two types of ratios are used because there exist algorithms where the difference between these two is significant.


Epsilon terms

In the literature, an approximation ratio for a maximization (minimization) problem of ''c'' - ϵ (min: ''c'' + ϵ) means that the algorithm has an approximation ratio of ''c'' ∓ ϵ for arbitrary ϵ > 0 but that the ratio has not (or cannot) be shown for ϵ = 0. An example of this is the optimal inapproximability — inexistence of approximation — ratio of 7 / 8 + ϵ for satisfiable MAX-3SAT instances due to Johan Håstad. As mentioned previously, when ''c'' = 1, the problem is said to have a polynomial-time approximation scheme. An ϵ-term may appear when an approximation algorithm introduces a multiplicative error and a constant error while the minimum optimum of instances of size ''n'' goes to infinity as ''n'' does. In this case, the approximation ratio is ''c'' ∓ ''k'' / OPT = ''c'' ∓ o(1) for some constants ''c'' and ''k''. Given arbitrary ϵ > 0, one can choose a large enough ''N'' such that the term ''k'' / OPT < ϵ for every ''n ≥ N''. For every fixed ϵ, instances of size ''n < N'' can be solved by brute force, thereby showing an approximation ratio — existence of approximation algorithms with a guarantee — of ''c'' ∓ ϵ for every ϵ > 0.


See also

* Domination analysis considers guarantees in terms of the rank of the computed solution. * PTAS - a type of approximation algorithm that takes the approximation ratio as a parameter * APX is the class of problems with some constant-factor approximation algorithm * Approximation-preserving reduction *
Exact algorithm In computer science and operations research, exact algorithms are algorithms that always solve an optimization problem to optimality. Unless P = NP, an exact algorithm for an NP-hard optimization problem cannot run in worst-case polynomial tim ...


Citations


References

* *
Thomas H. Cormen Thomas H. Cormen is the co-author of ''Introduction to Algorithms'', along with Charles Leiserson, Ron Rivest, and Cliff Stein. In 2013, he published a new book titled '' Algorithms Unlocked''. He is a professor of computer science at Dartmou ...
, Charles E. Leiserson, Ronald L. Rivest, and Clifford Stein. '' Introduction to Algorithms'', Second Edition. MIT Press and McGraw-Hill, 2001. . Chapter 35: Approximation Algorithms, pp. 1022–1056. * Dorit S. Hochbaum, ed. '' Approximation Algorithms for NP-Hard problems'', PWS Publishing Company, 1997. . Chapter 9: Various Notions of Approximations: Good, Better, Best, and More *


External links

*Pierluigi Crescenzi, Viggo Kann, Magnús Halldórsson,
Marek Karpinski Marek KarpinskiMarek Karpinski Biography
at the Hausdorff Center for Mathematics, Exc ...
and
Gerhard Woeginger Gerhard J. Woeginger (31 May 1964 – 1 April 2022) was an Austrian mathematician and computer scientist who worked in Germany as a professor at RWTH Aachen University, where he chaired the algorithms and complexity group in the department of co ...

''A compendium of NP optimization problems''
{{Authority control Computational complexity theory