Instances and results for the paper N. Forget, K. Klamroth, S. L. Gadegaard, A. Przybylski, and L. R. Nielsen, “Branch-and-bound and objective branching with three objectives,” Optimizaton Online, 2020. Online. The paper consider instances for tri-objective combinatorial (binary) optimization problems. Problem classes considered are Knapsack (KP), Assignment (AP) and Uncapacitated Facility Location (UFLP).
Instances are named Forget20_[problemClass]_[n]_[p]_[rangeOfCosts]_[costGenerationMethod]_[constaintId]_[id].raw
where
problemClass
is either KP (knapsack problem), AP (assignment problem), UFLP (Uncapacitated Facility Location Problem).n
is the size of the problem.p
is the number of objectives.rangeOfCosts
: Objective coefficient range e.g. 1-1000.costGenerationMethod
: Either random or spheredown, sphereup, 2box. For further details see the documentation functiongenSample
in the R package gMOIP.constaintId
: Same id if constraints are the same.id
: Instance id running within the constraint id.
All instance files are given in raw format (a text file). An example for a Production Planning Problem is:
10 1 3 10 30
maxsum maxsum maxsum
10 1 9 1 1 9 3 10 2 9
4 9 1 7 7 2 8 3 10 3
9 4 10 3 4 8 1 9 4 7
13 5 5 9 10 11 14 15 12 10
1 52
The general format is defined as:
n m p nZero nZeroObj
objectiveTypes
objectiveCoefficientMatrix
constraintMatrix
rHSMatrix
lbVector
ubVector
where:
n
is the number of variables.m
is the number of constrains.p
is the number of objectives.nZero
is the number of non-zero coefficients in the constraint matrix.nZeroObj
is the number of non-zero coefficients in the objective matrix.objectiveTypes
is the nature of the objectives to be optimized. An identifier should be added for each objective, and it should be done in the same order as in the objective matrix. Four types are supported:- maxsum: maximise a sum objective function
- minsum: minimise a sum objective function
objectiveCoefficientMatrix
is a p x n matrix defining the coefficients of the objective functionsconstraintMatrix
is a m x n matrix defining the coefficients of the constraintsrHSMatrix
is a m x 2 matrix defining the right-hand side of the constraints. For each constraint, two numbers are required:- The second number is the actual value of the right-hand side of the constraint
- The first number is an identifier that is used to define the sign of the constraint. Three identifiers can be used: 0 for >= constraints, 1 for <= constraints and 2 for = constraints.
Restults are given in the results
folder using the json
format (see Step 3).