Research on Software Effort Estimation Combined with Genetic Algorithm and Support Vector Regression

Jin-Cherng Lin, Chu-Ting Chang, Shengzhong Huang
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引用次数: 20

Abstract

For software developers, accurately forecasting software effort is very important. In the field of software engineering, it is also a very challenging topic. Miscalculated software effort in the early phase might cause a serious consequence. It not only effects the schedule, but also increases the cost price. It might cause a huge deficit. Because all of the different software development team has it is own way to calculate the software effort, the factors affecting project development are also varies. In order to solve these problems, this paper proposes a model which combines genetic algorithm (GA) with support vector machines (SVM). We can find the best parameter of SVM regression by the proposed model, and make more accurate prediction. During the research, we test and verify our model by using the historical data in COCOMO, Desharnais, Kemerer, and Albrecht. We will show the results by prediction level (PRED) and mean magnitude of relative error (MMRE).
结合遗传算法和支持向量回归的软件工作量估算研究
对于软件开发人员来说,准确地预测软件的工作量是非常重要的。在软件工程领域,这也是一个非常具有挑战性的课题。在早期阶段计算错误的软件工作可能会导致严重的后果。这不仅影响进度,而且增加了成本价格。这可能会导致巨额赤字。因为所有不同的软件开发团队都有自己计算软件工作量的方法,所以影响项目开发的因素也各不相同。为了解决这些问题,本文提出了一种遗传算法与支持向量机相结合的模型。通过所提出的模型,可以找到支持向量机回归的最佳参数,并进行更准确的预测。在研究过程中,我们利用COCOMO、dessharnais、Kemerer和Albrecht的历史数据对我们的模型进行了测试和验证。我们将通过预测水平(PRED)和平均相对误差幅度(MMRE)来显示结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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