Improving a Model for NFR Estimation Using Band Classification and Selection with KNN

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
F. Valdés-Souto, J. Valeriano-Assem, D. Torres-Robledo
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引用次数: 0

Abstract

Any software development project needs to estimate non-functional requirements (NFR). Typically, software managers are forced to use expert judgment to estimate the NFR. Today, NFRs cannot be measured, as there is no standardized unit of measurement for them. Consequently, most estimation models focus on the functional user requirements (FUR) and do not consider the NFR in the estimation process because these terms are often subjective. The objective of this paper was to show how an NFR estimation model was created using fuzzy logic, and K-Nearest Neighbors classifier algorithm, aiming to consider the subjectivity embedded in NFR terms to solve a specific problem in a Mexican company. The proposed model was developed using a database with real projects from a Mexican company in the private sector. The results were beneficial and better than the initial model considering quality criteria like mean magnitude of relative error (MMRE), standard deviation of magnitude of relative error (SDMRE) and prediction level (Pred 25%). Additionally, the proposed approach allows the managers to identify quantitative elements related to NFR that could be used to interpret the data and build additional models.

Abstract Image

利用 KNN 对波段进行分类和选择,改进 NFR 估算模型
摘要任何软件开发项目都需要估算非功能性需求(NFR)。通常情况下,软件管理者不得不使用专家判断来估算 NFR。如今,NFR 无法测量,因为没有标准化的测量单位。因此,大多数估算模型都只关注功能用户需求(FUR),而不考虑估算过程中的 NFR,因为这些术语通常都是主观的。本文旨在展示如何利用模糊逻辑和 K-Nearest Neighbors 分类器算法创建 NFR 估算模型,旨在考虑 NFR 术语的主观性,以解决墨西哥一家公司的具体问题。所提议的模型是利用墨西哥一家私营公司的真实项目数据库开发的。考虑到平均相对误差幅度(MMRE)、相对误差幅度标准偏差(SDMRE)和预测水平(Pred 25%)等质量标准,结果比初始模型更有益、更好。此外,建议的方法还能让管理人员识别与 NFR 相关的定量要素,这些要素可用于解释数据和建立其他模型。
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来源期刊
Programming and Computer Software
Programming and Computer Software 工程技术-计算机:软件工程
CiteScore
1.60
自引率
28.60%
发文量
35
审稿时长
>12 weeks
期刊介绍: Programming and Computer Software is a peer reviewed journal devoted to problems in all areas of computer science: operating systems, compiler technology, software engineering, artificial intelligence, etc.
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