具有精确步长l1回归的加速连续凸逼近方案

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Lukas Schynol;Moritz Hemsing;Marius Pesavento
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引用次数: 0

摘要

我们考虑了正则化最小二乘问题的最小化问题。最近的一种优化方法使用连续凸近似和精确的线搜索,这是高度竞争的,特别是在稀疏问题实例中。这项工作提出了一个加速方案的连续凸逼近技术与可忽略不计的额外计算成本。我们通过设计三个相关的可证明收敛性的加速算法来证明这一方案。第一种方法在变量更新中引入了一个沿着过去优化轨迹的额外下降步骤,该步骤受到Nesterov加速梯度方法的启发,并使用了封闭形式的步长。第二种方法同时沿着最佳响应和过去轨迹执行下降步骤,从而找到一个二维步长,也是封闭形式。第三种算法结合了前两种方法。所有算法都是无超参数的。实验结果证实,与基准算法相比,加速方法提高了收敛速度,并且在非稀疏实例中也保留了连续凸近似的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Accelerated Successive Convex Approximation Scheme With Exact Step Sizes for L1-Regression
We consider the minimization of $\ell _{1}$-regularized least-squares problems. A recent optimization approach uses successive convex approximations with an exact line search, which is highly competitive, especially in sparse problem instances. This work proposes an acceleration scheme for the successive convex approximation technique with a negligible additional computational cost. We demonstrate this scheme by devising three related accelerated algorithms with provable convergence. The first introduces an additional descent step along the past optimization trajectory in the variable update that is inspired by Nesterov's accelerated gradient method and uses a closed-form step size. The second performs a simultaneous descent step along both the best response and the past trajectory, thereby finding a two-dimensional step size, also in closed-form. The third algorithm combines the previous two approaches. All algorithms are hyperparameter-free. Empirical results confirm that the acceleration approaches improve the convergence rate compared to benchmark algorithms, and that they retain the benefits of successive convex approximation also in non-sparse instances.
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
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审稿时长
22 weeks
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