关于软件的局部性

Zhaopeng Tu, Z. Su, Premkumar T. Devanbu
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引用次数: 236

摘要

基于统计自然语言处理的n-gram语言模型已被证明能够成功地捕获源代码的重复和可预测的规律(“自然性”),并有助于完成代码建议、移植和设计辅助编码设备等任务。然而,我们在本文中表明,这种基于自然语言的模型未能利用源代码的一个特殊属性:局部性。我们发现,人类编写的程序是本地化的:它们具有可以捕获和利用的有用的局部规律。我们引入了一种新的缓存语言模型,该模型由一个n-gram和一个附加的“缓存”组件组成,以利用局部性。我们的经验表明,额外的缓存组件通过捕获软件的局域性(通过交叉熵和建议准确性来衡量)大大改进了n-gram方法。我们的模型的建议准确性实际上与最先进的语义增强语言模型相当;但它更简单,更容易实现。我们的缓存语言模型只需要词法化,因此适用于所有编程语言。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the localness of software
The n-gram language model, which has its roots in statistical natural language processing, has been shown to successfully capture the repetitive and predictable regularities (“naturalness") of source code, and help with tasks such as code suggestion, porting, and designing assistive coding devices. However, we show in this paper that this natural-language-based model fails to exploit a special property of source code: localness. We find that human-written programs are localized: they have useful local regularities that can be captured and exploited. We introduce a novel cache language model that consists of both an n-gram and an added “cache" component to exploit localness. We show empirically that the additional cache component greatly improves the n-gram approach by capturing the localness of software, as measured by both cross-entropy and suggestion accuracy. Our model’s suggestion accuracy is actually comparable to a state-of-the-art, semantically augmented language model; but it is simpler and easier to implement. Our cache language model requires nothing beyond lexicalization, and thus is applicable to all programming languages.
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