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Evolving Smoothing Kernels for Global Optimization

机译:不断发展的平滑核用于全局优化

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The Diffusion-Equation Method (DEM) - sometimes synonymously called the Continuation Method - is a well-known natural computation approach in optimization. The DEM continuously transforms the objective function by a (Gaussian) kernel technique to reduce barriers separating local and global minima. Now, the DEM can successfully solve problems of small sizes. Here, we present a generalization of the DEM to use convex combinations of smoothing kernels in Fourier space. We use a genetic algorithm to incrementally optimize the (meta-)combinatorial problem of finding better performing kernels for later optimization of an objective function. For two test applications we derive and show their transferability to larger problems. Most strikingly, the original DEM failed on a number of the test instances to find the global optimum while our transferable kernels - obtained via evolutionary computations - were able to find the global optimum.
机译:扩散方程法(DEM)-有时也称为Continuation Method-是优化中众所周知的自然计算方法。 DEM通过(高斯)核技术连续转换目标函数,以减少分隔局部和全局最小值的障碍。现在,DEM可以成功解决小尺寸的问题。在这里,我们介绍了DEM的一般化,以在傅立叶空间中使用平滑核的凸组合。我们使用遗传算法来逐步优化(元)组合问题,以找到性能更好的内核,以便以后对目标函数进行优化。对于两个测试应用程序,我们推导并显示了它们在更大问题上的可移植性。最引人注目的是,原始的DEM在许多测试实例上都未能找到全局最优值,而我们的可转移内核(通过进化计算获得)却能够找到全局最优值。

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