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Convex Hull Approximation of Nearly Optimal Lasso Solutions

机译:近似最优套索解的凸壳逼近

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In an ordinary feature selection procedure, a set of important features is obtained by solving an optimization problem such as the Lasso regression problem, and we expect that the obtained features explain the data well. In this study, instead of the single optimal solution, we consider finding a set of diverse yet nearly optimal solutions. To this end, we formulate the problem as finding a small number of solutions such that the convex hull of these solutions approximates the set of nearly optimal solutions. The proposed algorithm consists of two steps: First, we randomly sample the extreme points of the set of nearly optimal solutions. Then, we select a small number of points using a greedy algorithm. The experimental results indicate that the proposed algorithm can approximate the solution set well. The results also indicate that we can obtain Lasso solutions with a large diversity.
机译:在普通的特征选择过程中,通过解决优化问题(例如套索回归问题)获得了一组重要特征,并且我们希望所获得的特征能够很好地解释数据。在本研究中,我们考虑找到一组多样化但几乎最佳的解决方案,而不是单个的最佳解决方案。为此,我们将问题描述为找到少量解决方案,以使这些解决方案的凸包近似于最佳解决方案的集合。所提出的算法包括两个步骤:首先,我们随机采样接近最优解集的极限点。然后,我们使用贪婪算法选择少量点。实验结果表明,该算法可以很好地逼近解集。结果还表明,我们可以获得具有较大多样性的套索解。

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