An Initial Analysis of Repair and Side-effect Prediction for Neural Networks

Yuta Ishimoto, Ken Matsui, Masanari Kondo, Naoyasu Ubayashi, Yasutaka Kamei
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Abstract

With the prevalence of software systems adopting neural network models, the quality assurance of these systems has become crucial. Hence, various studies have proposed repairing methods for neural network models so far to improve the quality of the models. While these methods are evaluated by researchers, it is difficult to tell whether they succeed in all models and datasets (i.e., all developers’ environments). Because these methods require many resources, such as execution times, failing to repair neural networks would cost developers their resources. Hence, if developers can know whether repairing methods succeed before adopting them, they could avoid wasting their resources. This paper proposes prediction models that predict whether repairing methods succeed in repairing neural networks using a small resource. Our prediction models predict repairs and side-effects of repairing methods, respectively. We evaluated our prediction models on a state-of-the-art repairing method Arachne on three datasets, Fashion-MNIST, CIFAR-10, and GTSRB, and found our prediction models achieved high performance, an average ROC-AUC of 0.931 and an average f1score of 0.880 for the side-effects and an average ROC-AUC of 0.768 and an average f1-score of 0.725 for the repairs.
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神经网络修复与副作用预测的初步分析
随着采用神经网络模型的软件系统的普及,这些系统的质量保证变得至关重要。因此,到目前为止,各种研究都提出了修复神经网络模型的方法,以提高模型的质量。虽然研究人员对这些方法进行了评估,但很难判断它们是否适用于所有模型和数据集(即所有开发人员的环境)。因为这些方法需要很多资源,比如执行时间,修复失败的神经网络会消耗开发人员的资源。因此,如果开发人员能够在采用修复方法之前知道修复方法是否成功,他们就可以避免浪费资源。本文提出了一种预测模型,用于预测修复方法是否能在使用少量资源的情况下成功修复神经网络。我们的预测模型分别预测修复和修复方法的副作用。我们在Fashion-MNIST、CIFAR-10和GTSRB三个数据集上对最先进的修复方法Arachne的预测模型进行了评估,发现我们的预测模型取得了很高的性能,副作用的平均ROC-AUC为0.931,平均f1分为0.880,修复的平均ROC-AUC为0.768,平均f1分为0.725。
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