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Accelerated Large Scale Optimization by Concomitant Hashing

机译:伴随散列的加速大规模优化

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Traditional locality-sensitive hashing (LSH) techniques aim to tackle the curse of explosive data scale by guaranteeing that similar samples are projected onto proximal hash buckets. Despite the success of LSH on numerous vision tasks like image retrieval and object matching, however, its potential in large-scale optimization is only realized recently. In this paper we further advance this nascent area. We first identify two common operations known as the computational bottleneck of numerous optimization algorithms in a large-scale setting, i.e., min/max inner product. We propose a hashing scheme for accelerating min/max inner product, which exploits properties of order statistics of statistically correlated random vectors. Compared with other schemes, our algorithm exhibits improved recall at a lower computational cost. The effectiveness and efficiency of the proposed method are corroborated by theoretic analysis and several important applications. Especially, we use the proposed hashing scheme to perform approximate e_1 regularized least squares with dictionaries with millions of elements, a scale which is beyond the capability of currently known exact solvers. Nonetheless, it is highlighted that the focus of this paper is not on a new hashing scheme for approximate nearest neighbor problem. It exploits a new application for the hashing techniques and proposes a general framework for accelerating a large variety of optimization procedures in computer vision.
机译:传统的局部敏感哈希(LSH)技术旨在通过确保将相似的样本投影到近端哈希桶上来解决爆炸性数据规模的诅咒。尽管LSH在许多视觉任务(例如图像检索和对象匹配)上都取得了成功,但是它在大规模优化中的潜力直到最近才得以实现。在本文中,我们进一步推进了这一新生领域。我们首先确定两个常见操作,这些操作被称为大规模设置中众多优化算法的计算瓶颈,即最小/最大内积。我们提出了一种用于加速最小/最大内积的哈希方案,该方案利用了统计相关的随机向量的顺序统计性质。与其他方案相比,我们的算法以较低的计算量展现出更高的查全率。理论分析和一些重要应用证实了该方法的有效性和效率。特别是,我们使用提出的哈希方案来执行带有数百万个元素的字典的近似e_1正则化最小二乘法,其规模超出了当前已知的精确求解器的能力。尽管如此,需要强调的是,本文的重点不是针对近似最近邻居问题的新哈希方案。它利用了散列技术的新应用,并提出了用于加速计算机视觉中各种优化程序的通用框架。

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