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In the '''Maximum Density Knapsack''' variant there is an initial weight <math>w_0</math>,
In the '''Maximum Density Knapsack''' variant there is an initial weight <math>w_0</math>,
and we maximize the density of selected of items which do not violate the capacity constraint:
and we maximize the density of selected of items which do not violate the capacity constraint:
<ref>Cohen, R. and Katzir, L. 2008. [http://dx.doi.org/10.1016/j.ipl.2008.03.017 The Generalized Maximum Coverage Problem]. ''Inf. Process. Lett''. 108, 1 (Sep. 2008), 15-22.</ref>


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Revision as of 23:15, 3 February 2012

The knapsack problem is one of the most studied problems in combinatorial optimization, with many real-life applications. For this reason, many special cases and generalizations have been examined.

Common to all versions are a set of n items, with each item having an associated profit pj and weight wj. The objective is to pick some of the items, with maximal total profit, while obeying that the maximum total weight of the chosen items must not exceed W. Generally, these coefficients are scaled to become integers, and they are almost always assumed to be positive.

The knapsack problem in its most basic form:

maximize
subject to

Direct generalizations

One common variant is that each item can be chosen multiple times. The bounded knapsack problem specifies, for each item j, an upper bound uj (which may be a positive integer, or infinity) on the number of times item j can be selected:

maximize
subject to
integral for all j

The unbounded knapsack problem (sometimes called the integer knapsack problem) does not put any upper bounds on the number of times an item may be selected:

maximize
subject to
integral for all j

The unbounded variant was shown to be NP-complete in 1975 by Lueker[1]. Both the bounded and unbounded variants admit an FPTAS (essentially the same as the one used in the 0-1 knapsack problem).

If the items are subdivided into k classes denoted , and exactly one item must be taken from each class, we get the multiple-choice knapsack problem:

maximize
subject to
for all
for all and all

If for each item the profits and weights are identical, we get the subset sum problem (often the corresponding decision problem is given instead):

maximize
subject to

If we have n items and m knapsacks with capacities , we get the multiple knapsack problem:

maximize
subject to for all
for all
for all and all

Quadratic knapsack problem:

maximize
subject to
for all

The Set-Union Knapsack Problem:

SUKP is defined[2] as follows: Given a set of items and a set of so called elements , each item corresponds to a subset of the element set . The items have non-negative profits , , and the elements have non-negative weights , . The total weight of a set of items is given by the total weight of the elements of the union of the corresponding element sets. The objective is to find a subset of the items with total weight not exceeding the knapsack capacity and maximal profit.

Multiple constraints

If there is more than one constraint (for example, both a volume limit and a weight limit, where the volume and weight of each item are not related), we get the multiply constrained knapsack problem, multi-dimensional knapsack problem, or m-dimensional knapsack problem. (Note, "dimension" here does not refer to the shape of any items.) This has 0-1, bounded, and unbounded variants; the unbounded one is shown below.

maximize
subject to for all
, integer for all

The 0-1 variant (for any fixed ) was shown to be NP-complete around 1980 and more strongly, has no FPTAS unless P=NP[3][4].

The bounded and unbounded variants (for any fixed ) also exhibit the same hardness[5].

For any fixed , these problems do admit a pseudo-polynomial time algorithm (similar to the one for basic knapsack) and a PTAS[6].

Knapsack-like problems

If all the profits are 1, we can try to minimize the number of items which exactly fill the knapsack:

minimize
subject to

If we have a number of containers (of the same size), and we wish to pack all n items in as few containers as possible, we get the bin packing problem, which is modelled by having indicator variables container i is being used:

minimize
subject to

The cutting stock problem is identical to the bin packing problem, but since practical instances usually have far fewer types of items, another formulation is often used. Item j is needed Bj times, each "pattern" of items which fit into a single knapsack have a variable, xi (there are m patterns), and pattern i uses item j bij times:

minimize
subject to for all
for all

If, to the multiple choice knapsack problem, we add the constraint that each subset is of size n and remove the restriction on total weight, we get the assignment problem, which is also the problem of finding a maximal bipartite matching:

minimize
subject to for all
for all
for all and all

In the Maximum Density Knapsack variant there is an initial weight , and we maximize the density of selected of items which do not violate the capacity constraint: [7]

maximize
subject to

Although less common than those above, several other knapsack-like problems exist, including:

  • Collapsing knapsack problem
  • Nested knapsack problem
  • Nonlinear knapsack problem
  • Inverse-parametric knapsack problem[citation needed]

References

  1. ^ Lueker, G.S. (1975). "Report No. 178, Computer Science Laboratory, Princeton". {{cite journal}}: |contribution= ignored (help); Cite journal requires |journal= (help)
  2. ^ Knapsack Problems. Springer Verlag. 2005. ISBN 3-540-40286-1. {{cite book}}: |first= missing |last= (help); Unknown parameter |coauthors= ignored (|author= suggested) (help); Unknown parameter |unused_data= ignored (help)
  3. ^ "Complexity and Approximation Algorithms for Combinatorial Problems: A Survey". Central Economic and Mathematical Institute, Academy of Sciences of the USSR, Moscow. 1979. {{cite news}}: Unknown parameter |authors= ignored (help)
  4. ^ "On the Existence of Fast Approximation Schemes". Nonlinear Programming. 4. Academic Press: 415–437. 1980.
  5. ^ Magazine, M. J.; Chern, M.-S. (1984). "A Note on Approximation Schemes for Multidimensional Knapsack Problems". Mathematics of Operations Research. 9 (2): 244–247. doi:10.1287/moor.9.2.244.
  6. ^ H. Kellerer and U. Pferschy and D. Pisinger (2004). Knapsack Problems. Springer.
  7. ^ Cohen, R. and Katzir, L. 2008. The Generalized Maximum Coverage Problem. Inf. Process. Lett. 108, 1 (Sep. 2008), 15-22.