SPARK: Static Program Analysis Reasoning and Retrieving Knowledge

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Библиографические подробности
Опубликовано в::arXiv.org (Nov 3, 2017), p. n/a
Главный автор: Sodsong, Wasuwee
Другие авторы: Scholz, Bernhard, Chawla, Sanjay
Опубликовано:
Cornell University Library, arXiv.org
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Описание
Краткий обзор:Program analysis is a technique to reason about programs without executing them, and it has various applications in compilers, integrated development environments, and security. In this work, we present a machine learning pipeline that induces a security analyzer for programs by example. The security analyzer determines whether a program is either secure or insecure based on symbolic rules that were deduced by our machine learning pipeline. The machine pipeline is two-staged consisting of a Recurrent Neural Networks (RNN) and an Extractor that converts an RNN to symbolic rules. To evaluate the quality of the learned symbolic rules, we propose a sampling-based similarity measurement between two infinite regular languages. We conduct a case study using real-world data. In this work, we discuss the limitations of existing techniques and possible improvements in the future. The results show that with sufficient training data and a fair distribution of program paths it is feasible to deducing symbolic security rules for the OpenJDK library with millions lines of code.
ISSN:2331-8422
Источник:Engineering Database