Optimized COCOMO parameters using hybrid particle swarm optimization

N. A. Zakaria, Amelia Ritahani Ismail, Nadzurah Zainal Abidin, Nur Hidayah Mohd Khalid, Afrujaan Yakath Ali
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引用次数: 1

Abstract

Software effort and cost estimation are crucial parts of software project development. It determines the budget, time, and resources needed to develop a software project. The success of a software project development depends mainly on the accuracy of software effort and cost estimation. A poor estimation will impact the result, which worsens the project management. Various software effort estimation model has been introduced to resolve this problem. COnstructive COst MOdel (COCOMO) is a well-established software project estimation model; however, it lacks accuracy in effort and cost estimation, especially for current projects. Inaccuracy and complexity in the estimated effort have made it difficult to efficiently and effectively develop software, affecting the schedule, cost, and uncertain estimation directly. In this paper, Particle Swarm Optimization (PSO) is proposed as a metaheuristics optimization method to hybrid with three traditional state-of-art techniques such as Support Vector Machine (SVM), Linear Regression (LR), and Random Forest (RF) for optimizing the parameters of COCOMO models. The proposed approach is applied to the NASA software project dataset downloaded from the promise repository. Comparing the proposed approach has been made with the three traditional algorithms; however, the obtained results confirm low accuracy before hybrid with PSO. Overall, the results showed that PSOSVM on the NASA software project dataset could improve effort estimation accuracy and outperform other models.
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采用混合粒子群算法对COCOMO参数进行优化
软件工作和成本估算是软件项目开发的关键部分。它决定了开发软件项目所需的预算、时间和资源。软件项目开发的成功主要取决于软件工作和成本估算的准确性。糟糕的评估将影响结果,从而恶化项目管理。为了解决这一问题,引入了各种软件工作量估算模型。构建成本模型(COCOMO)是一种成熟的软件项目估算模型;然而,它在工作量和成本估算方面缺乏准确性,特别是对于当前的项目。估算工作的不准确性和复杂性使得高效和有效地开发软件变得困难,直接影响了进度、成本和不确定的估算。本文提出粒子群优化(Particle Swarm Optimization, PSO)作为一种元启发式优化方法,结合支持向量机(SVM)、线性回归(LR)和随机森林(Random Forest)三种最先进的传统技术,对COCOMO模型的参数进行优化。提出的方法应用于从承诺存储库下载的NASA软件项目数据集。将该方法与三种传统算法进行了比较;然而,得到的结果证实,在与PSO混合之前,精度较低。总体而言,结果表明,基于NASA软件项目数据集的PSOSVM可以提高工作量估计精度,优于其他模型。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
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3.00
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