Difference between revisions of "Integer Linear Programming"

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== References / Links ==
 
== References / Links ==
* Leo Brieman. '''Bagging Predictors'''. Machine Learning, 24, 123–140 (1996). - [http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.121.7654&rep=rep1&type=pdf]
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* Wikipedia article on Integer Programming - [http://en.wikipedia.org/wiki/Integer_programming]
* Wikipedia article on Bagging - [http://en.wikipedia.org/wiki/Bootstrap_aggregating]
 
  
 
== Relevant Papers ==
 
== Relevant Papers ==

Revision as of 03:00, 28 September 2011

Summary

Integer Linear Programming (ILP) is a method for:

  • Optimizing a linear objective function:
maximize
where is known and is unknown variable
  • Subject to linear equality or inequality constraints:
where and are known
  • Where can only take integer values

In other words, it is a method to find the optimal solution (i.e. the best assignment of unknown variables such as 's) that maximizes the objective function while meeting a list of requirements expressed as linear equality or inequality relationships.

The strength of ILP is in its joint inference. Instead of making local, isolated assignment of each , it makes joint assignments of all 's at the same time; respecting the global constraints while optimizing the objective function given.

ILP is known to be NP-hard. However, there are many off-the-shelf solvers, both commercial and non commercial, that are available. One such solver is SCIP, which is currently the fastest non commercial mixed integer programming solver.

Procedure

Input:

  • The linear objective function
  • The linear constraints

Output:

  • The assignment of unknown variables that optimizes the objective function and is consistent with the constraints

References / Links

  • Wikipedia article on Integer Programming - [1]

Relevant Papers