用变形测试验证一个深度学习框架

Junhua Ding, Xiaojun Kang, Xin-Hua Hu
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引用次数: 56

摘要

深度学习已经成为图像分类和自然语言处理的重要工具。然而,深度学习的有效性高度依赖于训练数据的质量以及学习的网络模型。深度学习的训练数据集通常相当大,网络模型也相当复杂。在将深度学习框架用于任何应用程序之前,有必要对其进行验证,包括网络模型、执行环境和训练数据集。在本文中,我们提出了一种验证深度学习框架分类准确性的方法,该框架包括卷积神经网络、深度学习执行环境和大量图像数据集。首先使用基于支持向量机的分类器对框架进行验证,然后使用变质验证方法对框架进行测试。通过验证用于生物细胞图像自动分类的深度学习分类器,证明了该方法的有效性。所提出的方法可用于验证不同应用的其他深度学习框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validating a Deep Learning Framework by Metamorphic Testing
Deep learning has become an important tool for image classification and natural language processing. However, the effectiveness of deep learning is highly dependent on the quality of the training data as well as the net model for the learning. The training data set for deep learning normally is fairly large, and the net model is pretty complex. It is necessary to validate the deep learning framework including the net model, executing environment, and training data set before it is used for any applications. In this paper, we propose an approach for validating the classification accuracy of a deep learning framework that includes a convolutional neural network, a deep learning executing environment, and a massive image data set. The framework is first validated with a classifier built on support vector machine, and then it is tested using a metamorphic validation approach. The effectiveness of the approach is demonstrated by validating a deep learning classifier for automated classification of biology cell images. The proposed approach can be used for validating other deep learning framework for different applications.
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