深森林测试覆盖标准

Ruilin Xie, Zhanqi Cui, Minghua Jia, Yuan Wen, Baoshui Hao
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引用次数: 1

摘要

在实践中,深度学习系统中出现了许多未知的错误。其中一个主要原因是,深度学习系统的行为是不可预测的,难以测试。适当的测试标准对于评估测试深度学习系统的充分性至关重要。而深度森林是一种深度学习模型,在小规模数据集和低计算能力的平台项目上取得了很好的表现,目前还没有测试标准。为了解决这一问题,本文提出了一套深森林测试覆盖标准。测试覆盖标准集由多粒度扫描节点覆盖(MGNC)、多粒度扫描叶片覆盖(MGLC)、级联森林输出覆盖(CFOC)和级联森林类覆盖(CFCC)组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing Coverage Criteria for Deep Forests
In practice, many unknown errors have emerged in deep learning systems. One of the main reasons is that the behaviors of deep learning systems are unpredictable and difficult to test. Proper testing criteria are vitally important to evaluate the adequacy of testing deep learning systems. However, there is no testing criterion available for the deep forest, which is a deep learning model that has achieved good performance on small-scale data sets and low-computing-power platform projects. To address this problem, we propose a set of testing coverage criteria for deep forests in this paper. The set of testing coverage criteria is composed of multi-grained scanning node coverage (MGNC), multi-grained scanning leaf coverage (MGLC), cascade forest output coverage (CFOC) and cascade forest class coverage (CFCC).
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