一种用于代码克隆检测的树嵌入方法

Yi Gao, Zan Wang, Shuang Liu, Lin Yang, Wei Sang, Yuanfang Cai
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引用次数: 23

摘要

克隆检测技术已经探索了几十年。近年来,深度学习技术被用于提高代码表示能力,提高代码克隆检测的水平。这些方法通常需要从AST转换到二叉树,以合并语法信息,这会带来开销。此外,这些方法进行术语嵌入,这需要大量的训练数据集。本文介绍了一种树嵌入技术来进行克隆检测。我们的方法首先进行树嵌入,获取AST中每个中间节点的节点向量,获取AST的结构信息。然后,我们用一种轻量级的方法将其涉及的节点向量组合成一个树向量。最后,测量树向量之间的欧氏距离来确定代码克隆。我们在一个名为TECCD的工具中实现了我们的方法,并使用BigCloneBench (BCB)和其他7个大型Java项目进行了评估。结果表明,该方法具有较好的准确率和查全率,优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TECCD: A Tree Embedding Approach for Code Clone Detection
Clone detection techniques have been explored for decades. Recently, deep learning techniques has been adopted to improve the code representation capability, and improve the state-of-the-art in code clone detection. These approaches usually require a transformation from AST to binary tree to incorporate syntactical information, which introduces overheads. Moreover, these approaches conduct term-embedding, which requires large training datasets. In this paper, we introduce a tree embedding technique to conduct clone detection. Our approach first conducts tree embedding to obtain a node vector for each intermediate node in the AST, which captures the structure information of ASTs. Then we compose a tree vector from its involving node vectors using a lightweight method. Lastly Euclidean distances between tree vectors are measured to determine code clones. We implement our approach in a tool called TECCD and conduct an evaluation using the BigCloneBench (BCB) and 7 other large scale Java projects. The results show that our approach achieves good accuracy and recall and outperforms existing approaches.
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