Does Integer Linear Programming give optimal solution?

I am trying to implement a solution to a problem using Integer linear programming (ILP). As the problem is NP-hard , I am wondering if the solution provided by Simplex Method would be optimal ? Can anyone comment on the optimality of ILP using Simplex Method or point to some source. Is there any other algorithm that can provide optimal solution to the ILP problem?

EDIT: I am looking for yes/no answer to the optimality of the solution obtained by any of the algorithms (Simplex Method, branch and bound and cutting planes) for ILP.

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We're looking for long answers that provide some explanation and context. Don't just give a one-line answer; explain why your answer is right, ideally with citations. Answers that don't include explanations may be removed.

Be specific. If you ask a vague question, you’ll get a vague answer. But if you give us details and context, we can provide a useful answer. –  Robert Harvey Mar 8 '13 at 20:39
If your ILP is a correct formulation of your problem, you will get a solution corresponding to your optimization constraints. Provided you have enough patience to wait for it, which could take ages. For an np-hard problem to do with graph layouts, I used general constraint based programming last year; took more than a day for some graphs with no more than 50 vertices and 250 edges. –  G. Bach Mar 8 '13 at 21:33
@RobertHarvey with all due respect, the question is not vague. harold has the correct answer. The question is probably a little advanced for SO, having more to do with mathematical algorithms than programming; but context isn't needed to understand what is being asked. –  Heath Hunnicutt Mar 8 '13 at 22:15
Harold's answer is precise as well as correct -- although it only answers the question of "does Simplex solve ILP problems?", not the additional question "what algorithms do solve ILP problems?" –  comingstorm Mar 8 '13 at 22:26
@StackUnderflow for a general integer linear program: simplex method: no. Branch and bound: yes, in finite time and finite memory, but it can easily be too much for a typical computer to solve quickly or without running out of memory. Cutting planes: The classic Gomory cuts will eventually get you to an optimal solution. Due to numerical instability, practical implementations of them are extremely non-trivial (there were 30+ years between their development and a practical implementation). –  raoulcousins Mar 11 '13 at 16:59

The Simplex Method doesn't handle the constraint that you want integers. Simply rounding the result is not guaranteed to give an optimal solution.

Using the Simplex Method to solve an ILP problem does work if the constraint matrix is totally dual integral.

Some algorithms that solve ILP (not constrained to totally dual integral constraint matrixes) are Branch and Bound, which is simple to implement and generally works well if the costs are reasonably uniform (very non-uniform costs make it try many attempts that look promising at first but turn out not to be), and Cutting Plane, which I honestly don't know much about but it's probably good because people are using it.

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The solution set for a linear programming problem is optimal by definition.

Linear programming is a class of algorithms known as "constraint satisfaction". Once you have satisfied the constraints you have solved the problem and there is no "better" solution, because by definition the best outcome is to satisfy the constraints.

If you have not completely modeled the problem, however, then obviously some other type of solution may be better.

Clarification: When I write above "satisfy the constraints", I am including maximization of objective function. The cutting plane algorithm is essentially an extension of the simplex algorithm.

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Thanks for the answer! –  Shan Mar 9 '13 at 0:03
Downvoted because this answer is wrong. In a linear program, you're searching for a solution that both satisfies the constraints and optimizes (either minimizes or maximizes) a given objective function. It also doesn't answer the question of what algorithms can solving integer programs. –  raoulcousins Mar 10 '13 at 0:54
@raoulcousins why is this answer wrong? –  Shan Mar 11 '13 at 10:00
The answer says "Once you have satisfied the constraints you have solved the problem and there is no "better" solution, because by definition the best outcome is to satisfy the constraints." This isn't true in general. You don't just want to satisfy the constraints, you want to minimize (or maximize) the objective function. –  raoulcousins Mar 11 '13 at 17:00
OP was asking about Integer LP methods, which experience suggests are going to produce a less-optimal solution than might be obtained by removing the integer-only requirement. Your answer seems to have ignored this point. Additionally @raoulcousins point about maximizing or minimizing the objective function subject to the constraints is well taken. –  Bob Jarvis Mar 28 '13 at 16:58