Efficient out-of-distribution detection via layer-adaptive scoring and early stopping.

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers in Big Data Pub Date : 2024-11-20 eCollection Date: 2024-01-01 DOI:10.3389/fdata.2024.1444634
Haoliang Wang, Chen Zhao, Feng Chen
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Abstract

Introduction: Multi-layer aggregation is key to the success of out-of-distribution (OOD) detection in deep neural networks. Moreover, in real-time systems, the efficiency of OOD detection is equally important as its effectiveness.

Methods: We propose a novel early stopping OOD detection framework for deep neural networks. By attaching multiple OOD detectors to the intermediate layers, this framework can detect OODs early to save computational cost. Additionally, through a layer-adaptive scoring function, it can adaptively select the optimal layer for each OOD based on its complexity, thereby improving OOD detection accuracy.

Results: Extensive experiments demonstrate that our proposed framework is robust against OODs of varying complexity. Adopting the early stopping strategy can increase OOD detection efficiency by up to 99.1% while maintaining superior accuracy.

Discussion: OODs of varying complexity are better detected at different layers. Leveraging the intrinsic characteristics of inputs encoded in the intermediate latent space is important for achieving high OOD detection accuracy. Our proposed framework, incorporating early stopping, significantly enhances OOD detection efficiency without compromising accuracy, making it practical for real-time applications.

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通过层自适应评分和早期停止进行有效的分布外检测。
摘要:多层聚集是深度神经网络中离分布(OOD)检测成功的关键。此外,在实时系统中,OOD检测的效率与有效性同样重要。方法:我们提出了一种新的深度神经网络早期停止OOD检测框架。该框架通过在中间层上附加多个面向对象检测器,实现了面向对象的早期检测,节省了计算成本。此外,通过层自适应评分函数,可以根据每个OOD的复杂程度自适应选择最优的一层,从而提高OOD的检测精度。结果:大量的实验表明,我们提出的框架对不同复杂性的面向对象对象具有鲁棒性。采用早期停止策略可以在保持优异精度的同时,将OOD检测效率提高99.1%。讨论:在不同的层更好地检测不同复杂性的面向对象。利用在中间潜在空间中编码的输入的固有特性对于实现高OOD检测精度非常重要。我们提出的框架,结合早期停止,显着提高OOD检测效率而不影响准确性,使其适用于实时应用。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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