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A soft computing approach for privacy requirements engineering: The PriS framework

机译:用于隐私需求工程的软计算方法:PriS框架

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摘要

Soft computing continuously gains interest in many fields of academic and industrial domain; among the most notable characteristics for using soft computing methodological tools is the ability to handle with vague and imprecise data in decision making processes. Similar conditions are often encountered in requirements engineering. In this paper, we introduce the PriS approach, a security and privacy requirements engineering framework which aims at incorporating privacy requirements early in the system development process. Specifically, PriS provides a set of concepts for modelling privacy requirements in the organisation domain and a systematic way-of-working for translating these requirements into system models. The conceptual model of PriS uses a goal hierarchy structure. Every privacy requirement is either applied or not on every goal. To this end every privacy requirement is a variable that can take two values [0,1] on every goal meaning that the requirements constraints the goal (value 1) or not (value 0). Following this way of working PriS ends up suggesting a number of implementation techniques based on the privacy requirements constraining the respective goals. Taking into account that the mapping of privacy variables to a crisp set consisting of two values [0,1] is constraining, we extend also the PriS framework so as to be able to address the degree of participation of every privacy requirement towards achieving the generic goal of privacy. Therefore, we propose a fuzzification of privacy variables that maps the expression of the degree of participation of each privacy variable to the [0,1] interval. We also present a mathematical framework that allows the concurrent management of combined independent preferences towards the necessity of a privacy measure; among the advantages of the presented extended framework is the scalability of the approach in such a way that the results are not limited by the number of independent opinions or by the number of factors considered while reasoning for a specific selection of privacy measures.
机译:软计算在学术和工业领域的许多领域中不断引起人们的兴趣。使用软计算方法工具的最显着特征之一就是能够在决策过程中处理模糊和不精确的数据。在需求工程中经常遇到类似的情况。在本文中,我们介绍了PriS方法,这是一种安全和隐私要求工程框架,旨在在系统开发过程的早期就纳入隐私要求。具体来说,PriS提供了一组用于在组织领域中对隐私需求进行建模的概念,以及将这些需求转换为系统模型的系统性工作方式。 PriS的概念模型使用目标层次结构。每个隐私要求都适用于或不适用于每个目标。为此,每个隐私要求都是一个变量,该变量可以对每个目标采用两个值[0,1],这意味着要求是否约束了目标(值1)或不约束目标(值0)。遵循这种工作方式,PriS最终根据隐私要求约束了各自的目标,提出了多种实施技术。考虑到隐私变量到由两个值[0,1]组成的清晰集的映射受到约束,我们还扩展了PriS框架,以便能够解决实现通用的每个隐私要求的参与程度隐私目标。因此,我们建议对隐私变量进行模糊化处理,以将每个隐私变量的参与度表达式映射到[0,1]区间。我们还提出了一个数学框架,该框架允许并发管理合并的独立偏好,以保护隐私措施的必要性;所提出的扩展框架的优点之一是该方法的可扩展性,使得结果不受独立意见的数量或在推理特定选择隐私措施时所考虑因素的数量的限制。

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