Linghan Meng, Yanhui Li, Lin Chen, Zhi Wang, Di Wu, Yuming Zhou, Baowen Xu
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引用次数: 14
摘要
深度学习技术的蓬勃发展导致了大量深度学习模型的建立和共享,这为深度学习模型的获取和重用提供了便利。对于给定的任务,我们会遇到具有相同功能的多个DL模型,这些模型被认为是实现该任务的候选模型。测试人员需要比较多个深度学习模型,并在整个测试环境中选择更合适的模型。由于标注工作的限制,测试人员的目标是选择一个有效的样本子集,以便对这些模型进行尽可能精确的秩估计。为了解决这一问题,我们提出了基于样本辨别的选择(Sample Discrimination based Selection, SDS)来选择能够区分多个模型的有效样本,即这些样本的预测行为(对/错)将有助于指示模型性能的趋势。为了评估SDS,我们对三个广泛使用的图像数据集和80个真实世界的DL模型进行了广泛的实证研究。实验结果表明,与现有的基线方法相比,SDS是一种有效的样本选择方法,可以对多个深度学习模型进行排序。
Measuring Discrimination to Boost Comparative Testing for Multiple Deep Learning Models
The boom of DL technology leads to massive DL models built and shared, which facilitates the acquisition and reuse of DL models. For a given task, we encounter multiple DL models available with the same functionality, which are considered as candidates to achieve this task. Testers are expected to compare multiple DL models and select the more suitable ones w.r.t. the whole testing context. Due to the limitation of labeling effort, testers aim to select an efficient subset of samples to make an as precise rank estimation as possible for these models. To tackle this problem, we propose Sample Discrimination based Selection (SDS) to select efficient samples that could discriminate multiple models, i.e., the prediction behaviors (right/wrong) of these samples would be helpful to indicate the trend of model performance. To evaluate SDS, we conduct an extensive empirical study with three widely-used image datasets and 80 real world DL models. The experiment results show that, compared with state-of-the-art baseline methods, SDS is an effective and efficient sample selection method to rank multiple DL models.