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Towards Code Summarization of APIs Based on Unofficial Documentation Using NLP Techniques

2022-08-12 15:07:30
AmirHossein Naghshzan

Abstract

Each programming language comes with official documentation to guide developers with APIs, methods and classes. However, in some cases, official documentation is not an efficient way to get the needed information. As a result, developers may consult other sources (e.g., Stack Overflow, GitHub) to learn more about an API, its implementation, usage, and other information that official documentation may not provide. In this research, we propose an automatic approach to generate summaries for APIs and methods by leveraging unofficial documentation using NLP techniques. Our findings demonstrate that the generated summaries are competitive, and can be used as a complementary source for guiding developers in software development and maintenance tasks.

Abstract (translated)

URL

https://arxiv.org/abs/2208.06318

PDF

https://arxiv.org/pdf/2208.06318.pdf


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