Handling of Categorical Data in Software Development Effort Estimation: A Systematic Mapping Study

F. Amazal, A. Idri
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引用次数: 1

Abstract

Producing reliable and accurate estimates of software effort remains a difficult task in software project management, especially at the early stages of the software life cycle where the information available is more categorical than numerical. In this paper, we conducted a systematic mapping study of papers dealing with categorical data in software development effort estimation. In total, 27 papers were identified from 1997 to January 2019. The selected studies were analyzed and classified according to eight criteria: publication channels, year of publication, research approach, contribution type, SDEE technique, Technique used to handle categorical data, types of categorical data and datasets used. The results showed that most of the selected papers investigate the use of both nominal and ordinal data. Furthermore, Euclidean distance, fuzzy logic, and fuzzy clustering techniques were the most used techniques to handle categorical data using analogy. Using regression, most papers employed ANOVA and combination of categories.
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软件开发工作量评估中分类数据的处理:系统映射研究
在软件项目管理中,产生可靠和准确的软件工作估计仍然是一项困难的任务,特别是在软件生命周期的早期阶段,可用的信息更多是分类而不是数字。在本文中,我们对处理软件开发工作量估算中的分类数据的论文进行了系统的映射研究。从1997年到2019年1月,共鉴定了27篇论文。根据发表渠道、发表年份、研究方法、贡献类型、SDEE技术、分类数据处理技术、分类数据类型和使用的数据集等8个标准对入选研究进行分析和分类。结果表明,大多数选定的论文调查使用名义和序数数据。此外,欧几里得距离、模糊逻辑和模糊聚类技术是利用类比处理分类数据最常用的技术。使用回归,大多数论文采用方差分析和组合类别。
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