将软件度量应用于正式规范:一种认知方法

R. Vinter, M. Loomes, D. Kornbrot
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引用次数: 26

摘要

人们普遍认为,在软件开发的早期阶段,错误的推理会导致开发人员做出错误的决策,从而导致系统中引入故障或异常。大多数关键的开发决策通常是在软件项目的早期系统规范阶段做出的,开发人员直到接近完成时才会收到关于其准确性的反馈。软件度量标准通常针对开发的编码或测试阶段,然而,当错误工作的影响已经产生时。本文提出了一个试探性模型,用于预测形式化规范中最有可能承认错误推论的部分,以便减少潜在的人为错误来源。填充模型的经验数据是在一系列认知实验中产生的,旨在识别Z符号的语言特性,这些特性容易在训练有素的用户中承认非逻辑推理错误和偏见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying software metrics to formal specifications: a cognitive approach
It is generally accepted that failure to reason correctly during the early stages of software development causes developers to make incorrect decisions which can lead to the introduction of faults or anomalies in systems. Most key development decisions are usually made at the early system specification stage of a software project and developers do not receive feedback on their accuracy until near its completion. Software metrics are generally aimed at the coding or testing stages of development, however, when the repercussions of erroneous work have already been incurred. This paper presents a tentative model for predicting those parts of formal specifications which are most likely to admit erroneous inferences, in order that potential sources of human error may be reduced. The empirical data populating the model was generated during a series of cognitive experiments aimed at identifying linguistic properties of the Z notation which are prone to admit non-logical reasoning errors and biases in trained users.
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