从错误中学习:多层优化框架

Li Zhang;Bhanu Garg;Pradyumna Sridhara;Ramtin Hosseini;Pengtao Xie
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引用次数: 0

摘要

机器学习中的双层优化方法在神经结构搜索、数据重加权等子领域中非常有效。然而,这些方法中的大多数都没有考虑到学习难度的变化,这限制了它们在实际应用中的性能。为了解决上述问题,我们提出了一个模仿人类学习过程的框架。在人类的学习中,学习者通常会更多地关注过去曾经犯过错误的话题,以加深对知识的理解和掌握。受这种有效的人类学习技术的启发,我们提出了一个多层次的优化框架,从错误中学习(LFM),用于机器学习。我们将LFM描述为一个三阶段优化问题:1)学习者学习,2)学习者根据之前的错误重新学习,3)学习者验证他的学习。我们开发了一种有效的算法来解决优化问题。我们进一步将该方法应用于可微神经结构搜索和数据重赋权。在CIFAR-10、CIFAR-100、ImageNet和其他相关数据集上的大量实验有力地证明了我们的方法的有效性。LFM的代码可在:https://github.com/importZL/LFM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning From Mistakes: A Multilevel Optimization Framework
Bi-level optimization methods in machine learning are popularly effective in subdomains of neural architecture search, data reweighting, etc. However, most of these methods do not factor in variations in learning difficulty, which limits their performance in real-world applications. To address the above problems, we propose a framework that imitates the learning process of humans. In human learning, learners usually focus more on the topics where mistakes have been made in the past to deepen their understanding and master the knowledge. Inspired by this effective human learning technique, we propose a multilevel optimization framework, learning from mistakes (LFM), for machine learning. We formulate LFM as a three-stage optimization problem: 1) the learner learns, 2) the learner relearns based on the mistakes made before, and 3) the learner validates his learning. We develop an efficient algorithm to solve the optimization problem. We further apply our method to differentiable neural architecture search and data reweighting. Extensive experiments on CIFAR-10, CIFAR-100, ImageNet, and other related datasets powerfully demonstrate the effectiveness of our approach. The code of LFM is available at: https://github.com/importZL/LFM.
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CiteScore
7.70
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