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Linearly Convergent Frank-Wolfe with Backtracking Line-Search

机译:线性收敛弗兰克 - 沃尔夫与回溯线路搜索

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摘要

Structured constraints in Machine Learning have recently brought the Frank-Wolfe (FW) family of algorithms back in the spotlight. While the classical FW algorithm has poor local convergence properties, the Away-steps and Pairwise FW variants have emerged as improved variants with faster convergence. However, these improved variants suffer from two practical limitations: they require at each iteration to solve a 1-dimensional minimization problem to set the step-size and also require the Frank-Wolfe linear subproblems to be solved exactly. In this paper we propose variants of Away-steps and Pairwise FW that lift both restrictions simultaneously. The proposed methods set the step-size based on a sufficient decrease condition, and do not require prior knowledge of the objective. Furthermore, they inherit all the favorable convergence properties of the exact line-search version, including linear convergence for strongly convex functions over polytopes. Benchmarks on different machine learning problems illustrate large performance gains of the proposed variants.
机译:机器学习中的结构化限制最近将Frank-Wolfe(FW)算法留在聚光灯下。虽然经典FW算法具有较差的本地收敛性,但远程步骤和成对FW变体已成为具有更快的收敛性的改进变体。然而,这些改进的变体遭受了两个实际限制:它们需要在每次迭代时解决一个1维最小化问题,以设置阶梯大小,并且还需要确切地解决弗兰克 - 沃尔夫的线性子问题。在本文中,我们提出了远程的变体和成对的FW,同时提升两个限制。所提出的方法基于足够的减少条件设定梯度大小,并且不需要先验知识的目标。此外,它们继承了确切的线路搜索版本的所有有利的收敛性质,包括用于通过多台功能的强凸函数的线性收敛。不同机器学习问题的基准说明了所提出的变体的大量性能。

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