SEAIFeb 6, 2024

Studying Vulnerable Code Entities in R

arXiv:2402.04421v1h-index: 3ICPC
Originality Synthesis-oriented
AI Analysis

This is an incremental study addressing the lack of knowledge about code language models for the R programming language, which has a wide developer community.

The study investigated the vulnerability of pre-trained code language models for R code entities using adversarial attacks, finding that identifiers are the most vulnerable, followed by R-specific syntax tokens.

Pre-trained Code Language Models (Code-PLMs) have shown many advancements and achieved state-of-the-art results for many software engineering tasks in the past few years. These models are mainly targeted for popular programming languages such as Java and Python, leaving out many other ones like R. Though R has a wide community of developers and users, there is little known about the applicability of Code-PLMs for R. In this preliminary study, we aim to investigate the vulnerability of Code-PLMs for code entities in R. For this purpose, we use an R dataset of code and comment pairs and then apply CodeAttack, a black-box attack model that uses the structure of code to generate adversarial code samples. We investigate how the model can attack different entities in R. This is the first step towards understanding the importance of R token types, compared to popular programming languages (e.g., Java). We limit our study to code summarization. Our results show that the most vulnerable code entity is the identifier, followed by some syntax tokens specific to R. The results can shed light on the importance of token types and help in developing models for code summarization and method name prediction for the R language.

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