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Robust Optimization in High-Dimensional Data Space with Support Vector Clustering

机译:具有支持向量聚类的高维数据空间中的强大优化

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Data-driven robust optimization has attracted immense attentions. In this work, we propose a data-driven uncertainty set for robust optimization under high-dimensional uncertainty. We propose to first decompose the high-dimensional data space into the principal subspace and the residual subspace by employing principal component analysis, and then adopt support vector clustering and classic polyhedral uncertainty set to describe the intricate geometry in the principal subspace and the tiny variations in the residual subspace, respectively, giving rise to a new data-driven uncertainty set. Similar to classic uncertainty sets, the proposed data-driven uncertainty set can also preserve the tractability of robust optimization problems. In addition, we establish the probabilistic guarantee theoretically by further calibrating the uncertainty set with an independent dataset, which ensures that the data-driven uncertainty set covers a portion of uncertainty with a given confidence level. Numerical results show the effectiveness of the proposed uncertainty set in reducing conservatism of robust optimization problems as well as the fidelity of the established probabilistic guarantee.
机译:数据驱动的稳健优化吸引了巨大的关注。在这项工作中,我们提出了在高维不确定性鲁棒优化数据驱动的不确定性集。我们建议第一分解高维数据空间划分成主子空间并且通过采用主成分分析的剩余子空间,然后通过支持向量聚类和经典多面体不确定性集来描述在主子空间的复杂几何形状和在微小的变化的剩余子空间,分别,产生一个新的数据驱动的不确定性集。类似于经典的不确定性套,所提出的数据驱动的不确定性集还可以保留的稳健优化问题的易处理性。此外,我们通过进一步校准不确定组与一个独立的数据集,这确保了数据驱动的不确定性集覆盖不确定性的与给定的置信水平的部分理论上建立概率保证。计算结果表明在减少的稳健优化问题的保守主义,以及所建立的概率保证的保真度提出的不确定性组的有效性。

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