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Dual Iterative Hard Thresholding: From Non-convex Sparse Minimization to Non-smooth Concave Maximization

机译:双重迭代硬阈值:从非凸稀疏最小化到非平滑凹最大化

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Iterative Hard Thresholding (IHT) is a class of projected gradient descent methods for optimizing sparsity-constrained minimization models, with the best known efficiency and scalability in practice. As far as we know, the existing IHT-style methods are designed for sparse minimization in primal form. It remains open to explore duality theory and algorithms in such a non-convex and NP-hard setting. In this article, we bridge the gap by establishing a duality theory for sparsity-constrained minimization with $ell_2$-regularized objective and proposing an IHT-style algorithm for dual maximization. Our sparse duality theory provides a set of sufficient and necessary conditions under which the original NP-hardon-convex problem can be equivalently solved in a dual space. The proposed dual IHT algorithm is a super-gradient method for maximizing the non-smooth dual objective. An interesting finding is that the sparse recovery performance of dual IHT is invariant to the Restricted Isometry Property (RIP), which is required by all the existing primal IHT without sparsity relaxation. Moreover, a stochastic variant of dual IHT is proposed for large-scale stochastic optimization. Numerical results demonstrate that dual IHT algorithms can achieve more accurate model estimation given small number of training data and have higher computational efficiency than the state-of-the-art primal IHT-style algorithms.
机译:迭代硬阈值(IHT)是一类投影梯度下降方法,用于优化稀疏约束的最小化模型,并在实践中具有最著名的效率和可伸缩性。据我们所知,现有的IHT样式方法是为原始形式的稀疏最小化而设计的。在这样的非凸和NP硬环境下探索对偶理论和算法仍然是开放的。在本文中,我们通过建立稀疏约束最小化的对偶理论和$ ell_2 $正规化目标,并提出IHT风格的对偶最大化算法来弥合差距。我们的稀疏对偶理论提供了一组充分必要的条件,在这些条件下,可以在对偶空间中等效地解决原始的NP硬/非凸问题。所提出的双重IHT算法是用于最大化非平滑双重目标的超梯度方法。一个有趣的发现是,双重IHT的稀疏恢复性能与受限等轴测特性(RIP)无关,RIP是所有现有原始IHT所要求的,且没有稀疏性。此外,提出了双重IHT的随机变体用于大规模随机优化。数值结果表明,与最新的原始IHT样式算法相比,双重IHT算法在训练数据较少的情况下可以实现更准确的模型估计,并且具有更高的计算效率。

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