An Integrated Process for Verifying Deep Learning Classifiers Using Dataset Dissimilarity Measures

Darryl Hond, H. Asgari, Daniel Jeffery, Mike Newman
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引用次数: 3

Abstract

The specification and verification of algorithms is vital for safety-critical autonomous systems which incorporate deep learning elements. We propose an integrated process for verifying artificial neural network (ANN) classifiers. This process consists of an off-line verification and an on-line performance prediction phase. The process is intended to verify ANN classifier generalisation performance, and to this end makes use of dataset dissimilarity measures. We introduce a novel measure for quantifying the dissimilarity between the dataset used to train a classification algorithm, and the test dataset used to evaluate and verify classifier performance. A system-level requirement could specify the permitted form of the functional relationship between classifier performance and a dissimilarity measure; such a requirement could be verified by dynamic testing. Experimental results, obtained using publicly available datasets, suggest that the measures have relevance to real-world practice for both quantifying dataset dissimilarity, and specifying and verifying classifier performance.
基于数据集不相似性度量的深度学习分类器验证集成过程
算法的规范和验证对于包含深度学习元素的安全关键自主系统至关重要。我们提出了一个集成的过程来验证人工神经网络(ANN)分类器。该过程包括离线验证和在线性能预测阶段。该过程旨在验证ANN分类器的泛化性能,并为此使用数据集不相似性度量。我们引入了一种新的度量来量化用于训练分类算法的数据集与用于评估和验证分类器性能的测试数据集之间的不相似性。系统级需求可以指定分类器性能和不相似性度量之间的功能关系的允许形式;这样的需求可以通过动态测试来验证。使用公开可用的数据集获得的实验结果表明,这些度量在量化数据集不相似性以及指定和验证分类器性能方面与现实世界的实践相关。
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