Semantic Source Code Models Using Identifier Embeddings

V. Efstathiou, D. Spinellis
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引用次数: 21

Abstract

The emergence of online open source repositories in the recent years has led to an explosion in the volume of openly available source code, coupled with metadata that relate to a variety of software development activities. As an effect, in line with recent advances in machine learning research, software maintenance activities are switching from symbolic formal methods to data–driven methods. In this context, the rich semantics hidden in source code identifiers provide opportunities for building semantic representations of code which can assist tasks of code search and reuse. To this end, we deliver in the form of pretrained vector space models, distributed code representations for six popular programming languages, namely, Java, Python, PHP, C, C++, and C#. The models are produced using fastText, a state–of–the–art library for learning word representations. Each model is trained on data from a single programming language; the code mined for producing all models amounts to over 13.000 repositories. We indicate dissimilarities between natural language and source code, as well as variations in coding conventions in between the different programming languages we processed. We describe how these heterogeneities guided the data preprocessing decisions we took and the selection of the training parameters in the released models. Finally, we propose potential applications of the models and discuss limitations of the models.
使用标识符嵌入的语义源代码模型
近年来在线开放源代码存储库的出现导致了公开可用源代码数量的爆炸式增长,以及与各种软件开发活动相关的元数据。因此,随着机器学习研究的最新进展,软件维护活动正在从符号形式方法转向数据驱动方法。在这种情况下,源代码标识符中隐藏的丰富语义为构建代码的语义表示提供了机会,这有助于代码搜索和重用任务。为此,我们以预训练向量空间模型的形式提供了六种流行编程语言的分布式代码表示,即Java, Python, PHP, C, c++和c#。这些模型是使用fastText生成的,这是一个用于学习单词表示的最先进的库。每个模型都使用来自单一编程语言的数据进行训练;为生成所有模型而挖掘的代码总计超过13000个存储库。我们指出了自然语言和源代码之间的差异,以及我们处理的不同编程语言之间编码约定的差异。我们描述了这些异质性如何指导我们所做的数据预处理决策和发布模型中训练参数的选择。最后,我们提出了模型的潜在应用,并讨论了模型的局限性。
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