A study of the Dream Net model robustness across continual learning scenarios

M. Mainsant, M. Mermillod, C. Godin, M. Reyboz
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Abstract

Continual learning is one of the major challenges of deep learning. For decades, many studies have proposed efficient models overcoming catastrophic forgetting when learning new data. However, as they were focused on providing the best reduce-forgetting performance, studies have moved away from real-life applications where algorithms need to adapt to changing environments and perform, no matter the type of data arrival. Therefore, there is a growing need to define new scenarios to assess the robustness of existing methods with those challenges in mind. The issue of data availability during training is another essential point in the development of solid continual learning algorithms. Depending on the streaming formulation, the model needs in the more extreme scenarios to be able to adapt to new data as soon as it arrives and without the possibility to review it afterwards. In this study, we propose a review of existing continual learning scenarios and their associated terms. Those existing terms and definitions are synthesized in an atlas in order to provide a better overview. Based on two of the main categories defined in the atlas, “Class-IL.” and “Domain-IL”, we define eight different scenarios with data streams of varying complexity that allow to test the models robustness in changing data arrival scenarios. We choose to evaluate Dream Net - Data Free, a privacy-preserving continual learning algorithm, in each proposed scenario and demonstrate that this model is robust enough to succeed in every proposed scenario, regardless of how the data is presented. We also show that it is competitive with other continual learning literature algorithms that are not privacy preserving which is a clear advantage for real-life human-centered applications.
梦网模型在持续学习场景下的稳健性研究
持续学习是深度学习的主要挑战之一。几十年来,许多研究提出了克服学习新数据时灾难性遗忘的有效模型。然而,由于他们专注于提供最佳的减少遗忘性能,研究已经远离了现实应用,在现实应用中,算法需要适应不断变化的环境并执行,无论数据到达的类型如何。因此,越来越需要定义新的场景来评估现有方法的鲁棒性,同时考虑到这些挑战。训练期间的数据可用性问题是开发可靠的持续学习算法的另一个要点。根据流公式的不同,在更极端的情况下,模型需要能够在新数据到达时立即适应它,并且不可能在之后对其进行审查。在这项研究中,我们提出了现有的持续学习情景及其相关术语的回顾。为了提供更好的概述,这些现有的术语和定义被综合在一个地图集中。基于地图集中定义的两个主要类别,“Class-IL”。和“Domain-IL”,我们定义了8种不同的场景,其中包含不同复杂性的数据流,允许在不断变化的数据到达场景中测试模型的鲁棒性。我们选择在每个提议的场景中评估Dream Net - Data Free,这是一种保护隐私的连续学习算法,并证明该模型足够健壮,可以在每个提议的场景中成功,无论数据如何呈现。我们还表明,它与其他不保护隐私的持续学习文献算法具有竞争力,这对于现实生活中以人为中心的应用来说是一个明显的优势。
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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