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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Case-based reasoning with optimized weight derived by particle swarm optimization for software effort estimation
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Case-based reasoning with optimized weight derived by particle swarm optimization for software effort estimation

机译:基于案例的推理,通过粒子群优化估算来源的优化重量

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摘要

Software effort estimation (SEE) is the process of forecasting the effort required to develop a new software system, which is critical to the success of software project management and plays a significant role in software management activities. This study examines the potentials of the SEE method by integrating particle swarm optimization (PSO) with the case-based reasoning (CBR) method, where the PSO method is adopted to optimize the weights in weighted CBR. The experiments are implemented based on two datasets of software projects from the Maxwell and Desharnais datasets. The effectiveness of the proposed model is compared with other published results in terms of the performance measures, which are MMRE, Pred(0.25), and MdMRE. Experimental results show that the weighed CBR generates better software effort estimates than the unweighted CBR methods, and PSO-based weighted grey relational grade CBR achieves better performance and robustness in both datasets than other popular methods.
机译:软件努力估算(参见)是预测开发新软件系统所需的努力的过程,这对于软件项目管理的成功至关重要,并在软件管理活动中发挥重要作用。 本研究通过将粒子群优化(PSO)与基于案例的推理(CBR)方法集成,采用PSO方法来研究PEPS方法的潜力,以优化加权CBR中的权重。 实验是基于来自MaxWell和Desharnais数据集的两个软件项目的数据集。 拟议模型的有效性与其他公开的结果进行了比较,这些结果是MMRE,PEAT(0.25)和MDMRE的性能措施。 实验结果表明,权称称重的CBR产生比未加权的CBR方法更好的软件努力,而PSO的加权灰色关系级CBR比其他流行方法在两个数据集中实现了更好的性能和鲁棒性。

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