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- Macop UBQP implementation
- =========================
- Let's see how it is possible with the use of the **Macop** package to implement and deal with this UBQP instance problem.
- Solution structure definition
- ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
- Firstly, we are going to use a type of solution that will allow us to define the structure of our solutions.
- The available ``macop.solutions.discrete.BinarySolution`` type of solution within the Macop package represents exactly what one would wish for.
- Let's see an example of its use:
- .. code:: python
- from macop.solutions.discrete import BinarySolution
-
- solution = BinarySolution.random(10)
- print(solution)
- The resulting solution obtained:
- .. code:: bash
- Binary solution [1 0 1 1 1 0 0 1 1 0]
- UBQP Evaluator
- ~~~~~~~~~~~~~~
- Now that we have the structure of our solutions, and the means to generate them, we will seek to evaluate them.
- To do this, we need to create a new evaluator specific to our problem and the relative evaluation function we need to maximise:
- - :math:`f(x)=x′Qx=\sum_{i=1}^{n}{\sum_{j=1}^{n}{q_{ij}⋅x_i⋅x_j}}`
- So we are going to create a class that will inherit from the abstract class ``macop.evalutarors.base.Evaluator``:
- .. code:: python
- from macop.evaluators.base import Evaluator
- class UBQPEvaluator(Evaluator):
- """UBQP evaluator class which enables to compute UBQP solution using specific `_data`
- - stores into its `_data` dictionary attritute required measures when computing a UBQP solution
- - `_data['Q']` matrix of size n x n with real values data (stored as numpy array)
- - `compute` method enables to compute and associate a score to a given UBQP solution
- """
- def compute(self, solution):
- """Apply the computation of fitness from solution
- Args:
- solution: {Solution} -- UBQP solution instance
-
- Returns:
- {float} -- fitness score of solution
- """
- fitness = 0
- for index_i, val_i in enumerate(solution.getdata = )):
- for index_j, val_j in enumerate(solution.getdata = )):
- fitness += self._data['Q'][index_i, index_j] * val_i * val_j
- return fitness
- The cost function for the Unconstrained binary quadratic problem is now well defined.
- .. tip::
- The class proposed here, is available in the Macop package ``macop.evaluators.discrete.mono.UBQPEvaluator``.
- Running algorithm
- ~~~~~~~~~~~~~~~~~
- Now that the necessary tools are available, we will be able to deal with our problem and look for solutions in the search space of our UBQP instance.
- Here we will use local search algorithms already implemented in **Macop**.
- If you are uncomfortable with some of the elements in the code that will follow, you can refer to the more complete **Macop** documentation_ that focuses more on the concepts and tools of the package.
- .. code:: python
- # main imports
- import numpy as np
- # module imports
- from macop.solutions.discrete import BinarySolution
- from macop.evaluators.discrete.mono import UBQPEvaluator
- from macop.operators.discrete.mutators import SimpleMutation, SimpleBinaryMutation
- from macop.policies.classicals import RandomPolicy
- from macop.algorithms.mono import IteratedLocalSearch as ILS
- from macop.algorithms.mono import HillClimberFirstImprovment
- # usefull instance data
- n = 100
- qap_instance_file = 'qap_instance.txt'
- # default validator
- def validator(solution):
- return True
- # define init random solution
- def init():
- return BinarySolution.random(n, validator)
- # load UBQP instance
- with open(ubqp_instance_file, 'r') as f:
- lines = f.readlines()
- # get all string floating point values of matrix
- Q_data = ''.join([ line.replace('\n', '') for line in lines[8:] ])
- # load the concatenate obtained string
- Q_matrix = np.fromstring(Q_data, dtype=float, sep=' ').reshape(n, n)
- print(f'Q_matrix shape: {Q_matrix.shape}')
- # only one operator here
- operators = [SimpleMutation(), SimpleBinaryMutation()]
- # random policy
- policy = RandomPolicy(operators)
- # use of loaded data from UBQP instance
- evaluator = UBQPEvaluator(data={'Q': Q_matrix})
- # passing global evaluation param from ILS
- hcfi = HillClimberFirstImprovment(init, evaluator, operators, policy, validator, maximise=True, verbose=True)
- algo = ILS(init, evaluator, operators, policy, validator, localSearch=hcfi, maximise=True, verbose=True)
- # run the algorithm
- bestSol = algo.run(10000, ls_evaluations=100)
- print('Solution for UBQP instance score is {}'.format(evaluator.compute(bestSol)))
- UBQP problem solving is now possible with **Macop**. As a reminder, the complete code is available in the ubqpExample.py_ file.
- .. _ubqpExample.py: https://github.com/jbuisine/macop/blob/master/examples/ubqpExample.py
- .. _documentation: https://jbuisine.github.io/macop/_build/html/documentations
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