基于源代码分析的诊断数据保密编校

Lixi Zhou, Lei Yu, Jia Zou, Hong Min
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引用次数: 1

摘要

在工业软件诊断和调试过程中,保护诊断数据(如日志)中的敏感信息是一个关键问题。虽然开发了许多工具来自动编辑日志以识别和删除敏感信息,但它们有严重的局限性,可能导致过度编辑和丢失关键诊断信息(误报),或泄露敏感信息(误报),或两者兼而有之。为了解决这个问题,在本文中,我们提出了一种用于日志编校的源代码分析方法。为了识别包含敏感信息的日志消息,我们的方法在带有记录器代码增强的源代码中定位相应的日志语句,并检查日志语句是否使用从源代码构建的数据流图从敏感源输出数据。根据数据源的敏感性进一步应用适当的编校规则,以保留日志中的隐私信息。我们进行了实验评估,并与其他流行的基线进行了比较。结果表明,该方法可以显著提高敏感信息的检测精度,减少误报和误报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Redaction of Diagnosis Data through Source Code Analysis
Protecting sensitive information in diagnostic data such as logs, is a critical concern in the industrial software diagnosis and debugging process. While there are many tools developed to automatically redact the logs for identifying and removing sensitive information, they have severe limitations which can cause either over redaction and loss of critical diagnostic information (false positives), or disclosure of sensitive information (false negatives), or both. To address the problem, in this paper, we argue for a source code analysis approach for log redaction. To identify a log message containing sensitive information, our method locates the corresponding log statement in the source code with logger code augmentation, and checks if the log statement outputs data from sensitive sources by using the data flow graph built from the source code. Appropriate redaction rules are further applied depending on the sensitiveness of the data sources to preserve the privacy information in the logs. We conducted experimental evaluation and comparison with other popular baselines. The results demonstrate that our approach can significantly improve the detection precision of the sensitive information and reduce both false positives and negatives.
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