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Application of Inhomogeneous Markov Chain Monte Carlo to a Genetic Algorithm

机译:非均匀马尔可夫链蒙特卡罗算法在遗传算法中的应用

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There has been active study on the genetic algorithm based on the homogeneous Markov chain Monte Carlo method. Noticing that a convergence of the Markov chain to an invariant distribution is possible even for an inhomogeneous one, we propose a new method using the inhomogeneous Markov chain Monte Carlo for the genetic algorithm. In this method we separate solutions to an object and a supporter. The former is the solution that should converge to the invariant distribution, while the latter is used for keeping a diversity of solutions. After presenting experiments for convergences in our method, we apply this method for the optimization for the deceptive problem and the binary quadratic programming problem. By experimental results we confirm that it is quite effective for the optimization.
机译:基于齐次马尔可夫链蒙特卡罗方法的遗传算法已有积极研究。注意到即使对于不均匀的马尔可夫链,收敛到不变分布也是可能的,我们提出了一种使用不均匀的马尔可夫链蒙特卡罗作为遗传算法的新方法。在这种方法中,我们将解决方案分为对象和支持者。前者是应收敛于不变分布的解,而后者则用于保持解的多样性。在介绍了我们的方法的收敛性实验之后,我们将该方法用于欺骗性问题和二进制二次规划问题的优化。通过实验结果,我们确认该优化方法非常有效。

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