AdvisIL -一个班级增量学习顾问

Eva Feillet, Grégoire Petit, Adrian-Stefan Popescu, M. Reyboz, C. Hudelot
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引用次数: 1

摘要

最近的类增量学习方法结合了深度神经结构和学习算法来处理内存和计算约束下的流数据。现有方法的性能取决于增量过程的特性。迄今为止,除了在学习过程开始时在可用的训练数据上测试所有对学习算法和神经架构,以选择合适的算法-架构组合之外,没有其他方法。为了解决这一问题,本文引入了AdvisIL方法,该方法将增量过程的主要特征(深度模型的内存预算、初始类数、增量步长)作为输入,并推荐了一套适应的学习算法和神经结构。该建议是基于用户提供的设置和大量预先计算的实验之间的相似性。AdvisIL使类增量学习更容易,因为用户不需要运行繁琐的实验来设计他们的系统。我们在六个增量设置和三个深度模型尺寸下的四个数据集上评估了我们的方法。我们比较了六种算法和三种深度神经结构。结果表明,AdvisIL的整体性能优于任何一种学习算法和神经结构的单独组合。AdvisIL的代码可在https://github.com/EvaJF/AdvisIL上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AdvisIL - A Class-Incremental Learning Advisor
Recent class-incremental learning methods combine deep neural architectures and learning algorithms to handle streaming data under memory and computational constraints. The performance of existing methods varies depending on the characteristics of the incremental process. To date, there is no other approach than to test all pairs of learning algorithms and neural architectures on the training data available at the start of the learning process to select a suited algorithm-architecture combination. To tackle this problem, in this article, we introduce AdvisIL, a method which takes as input the main characteristics of the incremental process (memory budget for the deep model, initial number of classes, size of incremental steps) and recommends an adapted pair of learning algorithm and neural architecture. The recommendation is based on a similarity between the user-provided settings and a large set of pre-computed experiments. AdvisIL makes class-incremental learning easier, since users do not need to run cumbersome experiments to design their system. We evaluate our method on four datasets under six incremental settings and three deep model sizes. We compare six algorithms and three deep neural architectures. Results show that AdvisIL has better overall performance than any of the individual combinations of a learning algorithm and a neural architecture. AdvisIL’s code is available at https://github.com/EvaJF/AdvisIL.
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