用于非凸学习的随机三项共轭梯度法与方差技术

IF 1.6 2区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS Statistics and Computing Pub Date : 2024-03-27 DOI:10.1007/s11222-024-10409-5
Chen Ouyang, Chenkaixiang Lu, Xiong Zhao, Ruping Huang, Gonglin Yuan, Yiyan Jiang
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引用次数: 0

摘要

在机器学习的训练过程中,经验风险损失函数的最小化通常用于衡量模型预测值与实际值之间的差异。随机梯度下降法在这类优化问题中非常流行,但从理论分析来看收敛速度较慢。为了解决这个问题,已经有很多算法采用了方差缩小技术,如 SVRG、SAG、SAGA 等。一些学者将传统优化中的共轭梯度法应用到这些算法中,如 CGVR、SCGA、SCGN 等,基本可以达到线性收敛速度,但这些结论往往需要在一些比较强的假设条件下才能成立。在传统优化中,共轭梯度法往往需要使用直线搜索技术才能取得良好的实验结果。从某种意义上说,直线搜索体现了共轭方法的某些特性。受此启发,我们将改进的三期共轭梯度法和线搜索技术应用于机器学习。在理论分析中,我们在较弱的条件假设下获得了与 SCGA 相同的收敛率。我们还利用两个非凸机器学习模型测试了算法的收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Stochastic three-term conjugate gradient method with variance technique for non-convex learning

In the training process of machine learning, the minimization of the empirical risk loss function is often used to measure the difference between the model’s predicted value and the real value. Stochastic gradient descent is very popular for this type of optimization problem, but converges slowly in theoretical analysis. To solve this problem, there are already many algorithms with variance reduction techniques, such as SVRG, SAG, SAGA, etc. Some scholars apply the conjugate gradient method in traditional optimization to these algorithms, such as CGVR, SCGA, SCGN, etc., which can basically achieve linear convergence speed, but these conclusions often need to be established under some relatively strong assumptions. In traditional optimization, the conjugate gradient method often requires the use of line search techniques to achieve good experimental results. In a sense, line search embodies some properties of the conjugate methods. Taking inspiration from this, we apply the modified three-term conjugate gradient method and line search technique to machine learning. In our theoretical analysis, we obtain the same convergence rate as SCGA under weaker conditional assumptions. We also test the convergence of our algorithm using two non-convex machine learning models.

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来源期刊
Statistics and Computing
Statistics and Computing 数学-计算机:理论方法
CiteScore
3.20
自引率
4.50%
发文量
93
审稿时长
6-12 weeks
期刊介绍: Statistics and Computing is a bi-monthly refereed journal which publishes papers covering the range of the interface between the statistical and computing sciences. In particular, it addresses the use of statistical concepts in computing science, for example in machine learning, computer vision and data analytics, as well as the use of computers in data modelling, prediction and analysis. Specific topics which are covered include: techniques for evaluating analytically intractable problems such as bootstrap resampling, Markov chain Monte Carlo, sequential Monte Carlo, approximate Bayesian computation, search and optimization methods, stochastic simulation and Monte Carlo, graphics, computer environments, statistical approaches to software errors, information retrieval, machine learning, statistics of databases and database technology, huge data sets and big data analytics, computer algebra, graphical models, image processing, tomography, inverse problems and uncertainty quantification. In addition, the journal contains original research reports, authoritative review papers, discussed papers, and occasional special issues on particular topics or carrying proceedings of relevant conferences. Statistics and Computing also publishes book review and software review sections.
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