语义源代码标注的语言无关模型

Ben U. Gelman, B. Hoyle, Jessica Moore, Joshua Saxe, David Slater
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引用次数: 7

摘要

近年来,由于可用源代码的快速扩展,代码搜索和理解变得更加困难。当前的工具缺乏一种方法来大规模地标记任意代码,同时维护新编程语言、库和功能的最新表示。源代码的全面标记使用户能够搜索感兴趣的文档并获得对其内容的高级理解。我们使用Stack Overflow代码片段和它们的标签来训练一个与语言无关的深度卷积神经网络,以自动预测源代码文档的语义标签。在Stack Overflow代码片段中,我们展示了一个包含4,508个标签的长尾列表在0.957下的平均面积。我们还在从Github检索的一组不同的未标记源代码文档上手动验证模型输出,并获得86.6%的前1准确率。这强烈表明模型成功地将其知识从堆栈溢出片段转移到任意源代码文档。
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A language-agnostic model for semantic source code labeling
Code search and comprehension have become more difficult in recent years due to the rapid expansion of available source code. Current tools lack a way to label arbitrary code at scale while maintaining up-to-date representations of new programming languages, libraries, and functionalities. Comprehensive labeling of source code enables users to search for documents of interest and obtain a high-level understanding of their contents. We use Stack Overflow code snippets and their tags to train a language-agnostic, deep convolutional neural network to automatically predict semantic labels for source code documents. On Stack Overflow code snippets, we demonstrate a mean area under ROC of 0.957 over a long-tailed list of 4,508 tags. We also manually validate the model outputs on a diverse set of unlabeled source code documents retrieved from Github, and obtain a top-1 accuracy of 86.6%. This strongly indicates that the model successfully transfers its knowledge from Stack Overflow snippets to arbitrary source code documents.
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Proceedings of the 1st International Workshop on Machine Learning and Software Engineering in Symbiosis Fast deployment and scoring of support vector machine models in CPU and GPU A language-agnostic model for semantic source code labeling Learning-based testing for autonomous systems using spatial and temporal requirements A deep learning approach to program similarity
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