通过基于语言价值的类比来估算软件项目的工作量

A. Idri, A. Abran, T. Khoshgoftaar
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引用次数: 112

摘要

软件工程中的评估模型用于预测未来实体的一些重要属性,如软件开发工作量、软件可靠性和程序员的生产力。在这些模型中,那些估算软件工作量的模型近年来激发了大量的研究。这些软件工作模型使用的预测过程可以基于数学函数或其他技术,如基于类比的推理、神经网络、回归树和规则归纳模型。类比估算是软件工作量估算领域中最具吸引力的技术之一。然而,在类比估计中使用的程序还不能正确处理语言值(分类数据),如“非常低”、“低”和“高”。本文提出了一种基于类比推理、模糊逻辑和语言量词的软件项目工作量估算方法。这种方法被称为模糊类比。本文还基于COCOMO'81数据集对我们的方法进行了实证验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating software project effort by analogy based on linguistic values
Estimation models in software engineering are used to predict some important attributes of future entities such as software development effort, software reliability and programmers' productivity. Among these models, those estimating software effort have motivated considerable research in recent years. The prediction procedure used by these software-effort models can be based on a mathematical function or other techniques such as analogy based reasoning, neural networks, regression trees, and rule induction models. Estimation by analogy is one of the most attractive techniques in the software effort estimation field. However, the procedure used in estimation by analogy is not yet able to handle correctly linguistic values (categorical data) such as 'very low', 'low' and 'high'. We propose a new approach based on reasoning by analogy, fuzzy logic and linguistic quantifiers to estimate software project effort when it is described either by numerical or linguistic values; this approach is referred to as Fuzzy Analogy. This paper also presents an empirical validation of our approach based on the COCOMO'81 dataset.
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