基于转换语言模型的软件开发问答助手

Liliane do Nascimento Vale, M. Maia
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引用次数: 5

摘要

诸如Stack Overflow之类的问答平台对开发人员为其编程问题寻找解决方案的方式产生了实质性的影响。这些平台提供的大众知识内容也被用来利用软件开发工具。自然语言处理的最新进展,特别是在更强大的语言模型上,已经证明了增强文本理解和生成的能力。在这种情况下,我们的目标是调查可能影响这些模型应用的因素,以理解源代码相关数据,并为软件开发产生更多的交互式和智能助手。在这个初步的研究中,我们特别研究了一个how-to问题过滤器和问题中的上下文水平是否会影响基于问答转换器的模型的结果。我们认为,基于how-to问题的语料库微调模型可以在模型中产生积极的影响,更情境化的问题也会产生更客观的答案。
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Towards a question answering assistant for software development using a transformer-based language model
Question answering platforms, such as Stack Overflow, have impacted substantially how developers search for solutions for their programming problems. The crowd knowledge content available from such platforms has also been used to leverage software development tools. The recent advances on Natural Language Processing, specifically on more powerful language models, have demonstrated ability to enhance text understanding and generation. In this context, we aim at investigating the factors that can influence on the application of such models for understanding source code related data and produce more interactive and intelligent assistants for software development. In this preliminary study, we particularly investigate if a how-to question filter and the level of context in the question may impact the results of a question answering transformer-based model. We suggest that fine-tuning models with corpus based on how-to questions can impact positively in the model and more contextualized questions also induce more objective answers.
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