终身学习的抗追溯干扰

Runqi Wang, Yuxiang Bao, Baochang Zhang, Jianzhuang Liu, Wentao Zhu, Guodong Guo
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引用次数: 7

摘要

. 人类可以不断地学习新知识。然而,机器学习模型在学习新任务后,在先前任务上的性能会急剧下降。认知科学指出,相似知识的竞争是遗忘的重要原因。本文设计了一个基于元学习和大脑联想机制的终身学习范式。它从知识提取和知识记忆两个方面来解决这个问题。首先,我们通过背景攻击破坏样本的背景分布,增强模型以提取每个任务的关键特征。其次,根据增量知识与基础知识的相似性,设计增量知识的自适应融合,帮助模型对不同难度的知识进行容量分配;从理论上分析了所提出的学习范式能使不同任务的模型收敛到同一最优。在MNIST、CIFAR100、CUB200和ImageNet100数据集上对该方法进行了验证。代码可在https://github.com/bhrqw/ARI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。
Anti-Retroactive Interference for Lifelong Learning
. Humans can continuously learn new knowledge. However, machine learning models suffer from drastic dropping in performance on previous tasks after learning new tasks. Cognitive science points out that the competition of similar knowledge is an important cause of forgetting. In this paper, we design a paradigm for lifelong learning based on meta-learning and associative mechanism of the brain. It tackles the problem from two aspects: extracting knowledge and memorizing knowledge. First, we disrupt the sample’s background distribution through a background attack, which strengthens the model to extract the key features of each task. Second, according to the similarity between incremental knowledge and base knowledge, we design an adaptive fusion of incremental knowledge, which helps the model allocate capacity to the knowledge of different difficulties. It is theoretically analyzed that the proposed learning paradigm can make the models of different tasks converge to the same optimum. The proposed method is validated on the MNIST, CIFAR100, CUB200 and ImageNet100 datasets. The code is available at https://github.com/bhrqw/ARI .
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