Natural Language Processing and Deep Learning Towards Security Requirements Classification

Prudence Kadebu, V. Thada, Panashe Chiurunge
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引用次数: 1

Abstract

Security Requirements classification is an important area to the Software Engineering community in order to build software that is secure, robust and able to withstand attacks. This classification facilitates proper analysis of security requirements so that adequate security mechanisms are incorporated in the development process. Machine Learning techniques have been used in Security Requirements classification to aid in the process that lead to ensuring that correct security mechanisms are designed corresponding to the Security Requirements classifications made to eliminate the risk of security being incorporated in the late stages of development. However, these Machine Learning techniques have been found to have problems including, handcrafting of features, overfitting and failure to perform well with high dimensional data. In this paper we explore Natural Language Processing and Deep Learning to determine if this can be applied to Security Requirements classification.
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面向安全需求分类的自然语言处理和深度学习
为了构建安全、健壮且能够抵御攻击的软件,安全性需求分类是软件工程社区的一个重要领域。这种分类有助于对安全需求进行适当的分析,以便在开发过程中纳入适当的安全机制。机器学习技术已用于安全需求分类,以帮助确保正确的安全机制被设计为与安全需求分类相对应的过程,以消除在开发后期纳入安全的风险。然而,人们发现这些机器学习技术存在一些问题,包括手工制作特征、过拟合以及无法很好地处理高维数据。在本文中,我们探讨了自然语言处理和深度学习,以确定这是否可以应用于安全需求分类。
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