Meta transfer evidence deep learning for trustworthy few-shot classification

IF 7.5 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Expert Systems with Applications Pub Date : 2024-09-13 DOI:10.1016/j.eswa.2024.125371
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Abstract

Although the standard meta-learning methods have demonstrated strong performance in few-shot image classification scenarios, the models typically lack the capability to assess the reliability of their predictions, which can lead to risks in certain applications. Aiming at this problem, we first propose a meta-learning-based Evidential Deep Learning (EDL) called Meta Evidence Deep Learning (MetaEDL), which enables reliable prediction in the few-show image classification scenario. Being the same as general meta-learning methods, MetaEDL commonly employed shallow neural networks as feature extractors to avoid overfitting when dealing with few-shot samples, which significantly restricts the model’s ability to extract features. To further address this limitation, we propose a Meta Transfer Evidence Deep Learning (MetaTEDL) to address the few-shot trustworthy classification issue. MetaTEDL adopts a large-scale pre-trained neural network as its feature extractor. In the meta-training process, we only train two lightweight neuron operations Scaling and Shifting to reduce the risk of over-fitting. Then, two evidential head neural networks are trained to integrate evidence from different sources, aiming to improve the quality of the evidence output. We conduct comprehensive experiments on several challenging few-shot classification benchmarks. The results indicate that our proposed method not only outperforms other conventional meta-learning methods in terms of few-shot classification performance, but also has good UQ (uncertainty quantification), Uncertainty-guided active learning, and OOD (Out-of-Distribution) detection capabilities.

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元转移证据深度学习用于可信的少数几次分类
尽管标准的元学习方法在少量图像分类场景中表现出了强大的性能,但这些模型通常缺乏评估其预测可靠性的能力,这可能会在某些应用中导致风险。针对这一问题,我们首先提出了一种基于元学习的证据深度学习(EDL)方法,即元证据深度学习(Meta Evidence Deep Learning,MetaEDL),它能在少量图像分类场景中实现可靠的预测。与一般的元学习方法相同,MetaEDL通常采用浅层神经网络作为特征提取器,以避免在处理少量样本时出现过拟合,这极大地限制了模型提取特征的能力。为了进一步解决这一局限性,我们提出了一种元转移证据深度学习(Meta Transfer Evidence Deep Learning,简称 MetaTEDL)来解决少量可信分类问题。MetaTEDL 采用大规模预训练神经网络作为特征提取器。在元训练过程中,我们只训练 Scaling 和 Shifting 两种轻量级神经元操作,以降低过度拟合的风险。然后,训练两个证据头神经网络,以整合来自不同来源的证据,从而提高证据输出的质量。我们在几个具有挑战性的少量分类基准上进行了综合实验。实验结果表明,我们提出的方法不仅在少量分类性能方面优于其他传统元学习方法,而且具有良好的 UQ(不确定性量化)、不确定性引导的主动学习和 OOD(分布外)检测能力。
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来源期刊
Expert Systems with Applications
Expert Systems with Applications 工程技术-工程:电子与电气
CiteScore
13.80
自引率
10.60%
发文量
2045
审稿时长
8.7 months
期刊介绍: Expert Systems With Applications is an international journal dedicated to the exchange of information on expert and intelligent systems used globally in industry, government, and universities. The journal emphasizes original papers covering the design, development, testing, implementation, and management of these systems, offering practical guidelines. It spans various sectors such as finance, engineering, marketing, law, project management, information management, medicine, and more. The journal also welcomes papers on multi-agent systems, knowledge management, neural networks, knowledge discovery, data mining, and other related areas, excluding applications to military/defense systems.
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