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Submodular meets Spectral: Greedy Algorithms for Subset Selection, Sparse Approximation and Dictionary Selection

机译:子模块符合Spectral:贪婪算法,用于子集选择,稀疏近似和词典选择

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We study the problem of selecting a subset of k random variables from a large set, in order to obtain the best linear prediction of another variable of interest. This problem can be viewed in the context of both feature selection and sparse approximation. We analyze the performance of widely used greedy heuristics, using insights from the maximization of submodular functions and spectral analysis. We introduce the submodularity ratio as a key quantity to help understand why greedy algorithms perform well even when the variables are highly correlated. Using our techniques, we obtain the strongest known approximation guarantees for this problem, both in terms of the submodularity ratio and the smallest k-sparse eigenvalue of the covariance matrix. We also analyze greedy algorithms for the dictionary selection problem, and significantly improve the previously known guarantees. Our theoretical analysis is complemented by experiments on real-world and synthetic data sets; the experiments show that the submodularity ratio is a stronger predictor of the performance of greedy algorithms than other spectral parameters.
机译:我们研究了从大集合中选择k随机变量的子集的问题,以获得其他感兴趣变量的最佳线性预测。可以在特征选择和稀疏近似的上下文中查看此问题。我们分析了广泛使用的贪婪启发式的性能,利用来自子模块功能的最大化和光谱分析的洞察力。我们将子骨析比介绍为一个关键数量,以帮助理解为什么即使变量高度相关的贪婪算法也表现良好。使用我们的技术,我们获得了这个问题的最强的近似保证,无论是对子图标比和协方差矩阵的最小k稀疏的特征值。我们还分析了字典选择问题的贪婪算法,并显着改善了先前已知的保证。我们的理论分析由现实世界和合成数据集的实验补充;实验表明,子骨折比是比其他光谱参数的贪婪算法性能的更强的预测因子。

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