基于深度学习和OSS故障大数据的漏洞评估方法

Y. Tamura, H. Sone, Adarsh Anand, S. Yamada
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引用次数: 1

摘要

软件漏洞通常被定义为由于故障而导致的安全弱点。直到最近,瀑布模型才被广泛应用于软件开发中。此外,许多开源组件已经在许多商业软件中实现。最近,开源软件已经扩展到云服务、边缘计算和大数据。因此,必须考虑大数据和网络接入带来的影响。不同的研究人员提出了不同的脆弱性评估方法。在典型的脆弱性问题中,尚未提出考虑故障因素的脆弱性评估方法。然而,由于不确定性的存在,很多记录在bug跟踪系统上的故障因素很难进行评估。本文提出了一种基于深度学习的脆弱性评估方法。并通过实际数据对所提出的模型中未知参数估计方法进行了数值算例验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Vulnerability Assessment Based on Deep Learning and OSS Fault Big Data
Software vulnerability is generally defined as the weakness of security caused by the fault. Waterfall model has been usually used for the software development till recent past. Also, a number of open source components have been implemented in many commercial software. Recently, the open source software have extended to the cloud service and edge computing and the big data. It is thus imperetive to consider the impacts from the big data and network access. Various vulnerability assessment methods have been proposed by several researchers. In the typical vulnerability problems, methods of vulnerability assessment considering the fault factors have not been presented. Although, it is difficult to assess many fault factors recorded on the bug tracking system because of the uncertainty. The authors, in this paper, propose an assessment method of vulnerability by using the deep learning. Moreover, actual data to showcase the numerical examples for the estimation method of unknown parameters included in the proposed model for the vulnerability assessment have been presented.
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