Applicability of Neural Networks to Software Security

A. Adebiyi, J. Arreymbi, C. Imafidon
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引用次数: 3

Abstract

Software design flaws account for 50% software security vulnerability today. As attacks on vulnerable software continue to increase, the demand for secure software is also increasing thereby putting software developers under more pressure. This is especially true for those developers whose primary aim is to produce their software quickly under tight deadlines in order to release it into the market early. While there are many tools focusing on implementation problems during software development lifecycle (SDLC), this does not provide a complete solution in resolving software security problems. Therefore designing software with security in mind will go a long way in developing secure software. In this paper some of the current approaches used in integrating security at the design level of SDLC are discussed briefly and a new method of evaluating software design using neural network is presented. With the aid of the proposed neural network tool, this research found out that software design scenarios can be matched to attack patterns that identify the security flaws in the design scenarios. The result of performance of the neural network is presented in this paper.
神经网络在软件安全中的适用性
软件设计缺陷占当今软件安全漏洞的50%。随着对脆弱软件的攻击不断增加,对安全软件的需求也在增加,从而给软件开发人员带来了更大的压力。对于那些主要目标是在紧迫的期限内快速生产软件以便尽早将其发布到市场的开发人员来说尤其如此。虽然有许多工具关注软件开发生命周期(SDLC)中的实现问题,但这并没有提供解决软件安全问题的完整解决方案。因此,在设计软件时考虑到安全性将对开发安全软件大有帮助。本文简要讨论了目前在SDLC设计层面集成安全性的一些方法,并提出了一种利用神经网络评价软件设计的新方法。利用所提出的神经网络工具,本研究发现软件设计场景可以匹配到识别设计场景中安全漏洞的攻击模式。最后给出了神经网络的性能测试结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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