减轻假相关与因果逻辑扰动

IF 8.1 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS
Xiaoling Zhou, Wei Ye, Rui Xie, Shikun Zhang
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引用次数: 0

摘要

深度学习在科学、工业和社会等各个领域都取得了广泛的成功。然而,人们承认,某些方法存在非鲁棒性,依赖于虚假的相关性进行预测。解决这些限制是至关重要的,有必要发展的方法,可以解开虚假的相关性。本研究试图通过logit扰动实现因果模型,并引入了一种新的因果logit扰动(CLP)框架来训练分类器,为单个样本生成因果logit扰动,从而减轻非因果属性(即图像背景)和类别之间的虚假关联。我们的框架采用一个扰动网络,使用一系列样本的训练特征作为输入来生成样本的logit扰动。整个框架通过基于在线元学习的学习算法进行优化,并通过以反事实和事实方式增加元数据来利用人类因果知识。对长尾学习、噪声标签学习、广义长尾学习和亚种群迁移学习等四种典型的有偏差学习场景的实证评估表明,CLP始终如一地达到了最先进的性能。此外,可视化结果支持生成的因果扰动在将模型注意力重定向到因果图像属性和拆除虚假关联方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mitigating spurious correlations with causal logit perturbation
Deep learning has seen widespread success in various domains such as science, industry, and society. However, it is acknowledged that certain approaches suffer from non-robustness, relying on spurious correlations for predictions. Addressing these limitations is of paramount importance, necessitating the development of methods that can disentangle spurious correlations. This study attempts to implement causal models via logit perturbations and introduces a novel Causal Logit Perturbation (CLP) framework to train classifiers with generated causal logit perturbations for individual samples, thereby mitigating the spurious associations between non-causal attributes (i.e., image backgrounds) and classes. Our framework employs a perturbation network to generate sample-wise logit perturbations using a series of training characteristics of samples as inputs. The whole framework is optimized by an online meta-learning-based learning algorithm and leverages human causal knowledge by augmenting metadata in both counterfactual and factual manners. Empirical evaluations on four typical biased learning scenarios, including long-tail learning, noisy label learning, generalized long-tail learning, and subpopulation shift learning, demonstrate that CLP consistently achieves state-of-the-art performance. Moreover, visualization results support the effectiveness of the generated causal perturbations in redirecting model attention towards causal image attributes and dismantling spurious associations.
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来源期刊
Information Sciences
Information Sciences 工程技术-计算机:信息系统
CiteScore
14.00
自引率
17.30%
发文量
1322
审稿时长
10.4 months
期刊介绍: Informatics and Computer Science Intelligent Systems Applications is an esteemed international journal that focuses on publishing original and creative research findings in the field of information sciences. We also feature a limited number of timely tutorial and surveying contributions. Our journal aims to cater to a diverse audience, including researchers, developers, managers, strategic planners, graduate students, and anyone interested in staying up-to-date with cutting-edge research in information science, knowledge engineering, and intelligent systems. While readers are expected to share a common interest in information science, they come from varying backgrounds such as engineering, mathematics, statistics, physics, computer science, cell biology, molecular biology, management science, cognitive science, neurobiology, behavioral sciences, and biochemistry.
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