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Feb, 2024
在类增量学习中平衡因果效应
Balancing the Causal Effects in Class-Incremental Learning
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Junhao Zheng, Ruiyan Wang, Chongzhi Zhang, Huawen Feng, Qianli Ma
TL;DR
基于预训练模型的类增量学习中,平衡因果效应的方法(BaCE)通过构建来自新旧数据到新旧类别预测的因果路径,解决了新旧类别之间的因果失衡问题,并在多个任务和设置上优于其他类增量学习方法。
Abstract
class-incremental learning
(CIL) is a practical and challenging problem for achieving general artificial intelligence. Recently,
pre-trained models
(PTMs) have led to breakthroughs in both visual and natural lang
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