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A dimensionality reduction technique for unconstrained global optimization of functions with low effective dimensionality

机译:降低降低技术,用于无效的有效维度的功能的全局优化

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We investigate the unconstrained global optimization of functions with low effective dimensionality, which are constant along certain (unknown) linear subspaces. Extending the technique of random subspace embeddings in Wang et al. (2016, J. Artificial Intelligence Res., 55, 361-387), we study a generic Random Embeddings for Global Optimization (REGO) framework that is compatible with any global minimization algorithm. Instead of the original, potentially large-scale optimization problem, within REGO, a Gaussian random, low-dimensional problem with bound constraints is formulated and solved in a reduced space. We provide novel probabilistic bounds for the success of REGO in solving the original, low effective-dimensionality problem, which show its independence of the (potentially large) ambient dimension and its precise dependence on the dimensions of the effective and embedding subspaces. These results significantly improve existing theoretical analyses by providing the exact distribution of a reduced minimizer and its Euclidean norm and by the general assumptions required on the problem. We validate our theoretical findings by extensive numerical testing of REGO with three types of global optimization solvers, illustrating the improved scalability of REGO compared with the full-dimensional application of the respective solvers.
机译:我们研究了具有低有效维度的函数的无约束全局优化,沿特定(未知)线性子空间是恒定的。扩展Wang等人中随机子空间嵌入的技术。 (2016年,J。人工智能Res。,55,361-387),我们研究了与任何全球最小化算法兼容的全局优化框架(RECO)框架的通用随机嵌入。在雷戈(Rego)中,代替了原始的,潜在的大规模优化问题,而是在降低的空间中制定并求解了带有边界约束的低维问题。我们为Rego在解决原始的,低的有效差异问题方面的成功提供了新颖的概率界限,该问题表明了(潜在的大)环境维度的独立性及其对有效和嵌入子空间的维度的精确依赖性。这些结果通过提供减少的最小化器及其欧几里得规范的确切分布以及问题所需的一般假设,从而显着改善了现有的理论分析。我们通过使用三种类型的全局优化求解器对REGO进行广泛的数值测试来验证我们的理论发现,这说明了与各个求解器的全维应用相比,REGO的可伸缩性提高了。

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