Dynamics of Meta-learning Representation in the Teacher-student Scenario

Hui Wang, Cho Tung Yip, Bo Li
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Abstract

Gradient-based meta-learning algorithms have gained popularity for their ability to train models on new tasks using limited data. Empirical observations indicate that such algorithms are able to learn a shared representation across tasks, which is regarded as a key factor in their success. However, the in-depth theoretical understanding of the learning dynamics and the origin of the shared representation remains underdeveloped. In this work, we investigate the meta-learning dynamics of the non-linear two-layer neural networks trained on streaming tasks in the teach-student scenario. Through the lens of statistical physics analysis, we characterize the macroscopic behavior of the meta-training processes, the formation of the shared representation, and the generalization ability of the model on new tasks. The analysis also points to the importance of the choice of certain hyper-parameters of the learning algorithms.
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师生情景中元学习表征的动态变化
基于梯度的元学习算法能够利用有限的数据在新任务上训练模型,因此广受欢迎。经验观察表明,这种算法能够在不同任务间学习共享表征,这被认为是其成功的关键因素。然而,对学习动态和共享表征起源的深入理论理解仍然不够。在这项工作中,我们研究了非线性双层神经网络的元学习动态,这些神经网络是在师生情景下的流式任务中训练的。通过统计物理学分析的视角,我们描述了元训练过程的宏观行为、共享表征的形成以及模型对新任务的泛化能力。分析还指出了学习算法中某些超参数选择的重要性。
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