Investigating the Generalizability of Deep Learning-based Clone Detectors

Eunjong Choi, Norihiro Fuke, Yuji Fujiwara, Norihiro Yoshida, Katsuro Inoue
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引用次数: 1

Abstract

The generalizability of Deep Learning (DL) models is a significant challenge, as poor generalizability indicates that the model has overfitted to the training data and is not able to generalize to new data. Despite numerous DL-based clone detectors emerging in recent years, their generalizability has not been thoroughly assessed. This study investigates the generalizability of three DL-based clone detectors (CCLearner, ASTNN, and CodeBERT) by comparing their detection accuracy on different training and testing clone benchmarks. The results show that all three clone detectors do not generalize well to new data and there is a strong relationship between clone types and generalizability for CCLearner and ASTNN.
研究基于深度学习的克隆检测器的通用性
深度学习(Deep Learning, DL)模型的泛化性是一个重大挑战,因为泛化性差表明模型对训练数据过拟合,不能泛化到新的数据。尽管近年来出现了许多基于dl的克隆检测器,但它们的通用性尚未得到彻底评估。本研究通过比较三种基于dl的克隆检测器(CCLearner、ASTNN和CodeBERT)在不同训练和测试克隆基准上的检测精度,研究了它们的通用性。结果表明,这三种克隆检测器都不能很好地泛化新数据,CCLearner和ASTNN的克隆类型与泛化能力之间存在很强的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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