用神经函数逼近最小特征估计软件工作量

Pichai Jodpimai, Peraphon Sophatsathit, C. Lursinsap
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引用次数: 37

摘要

本研究的目的是通过结合简单的数学原理和人工神经网络技术来改进软件工作量估计。我们的过程包括三个主要步骤。第一步涉及从每个考虑的数据库准备数据。第二步是通过只考虑那些相关的特征来减少给定特征的数量。最后一步是利用前馈神经网络将软件工作量的估计问题转化为分类和函数逼近问题。实验数据取自知名的公共领域。结果表明,该模型在MMRE和PRED测度的基础上获得了令人满意的估计精度。
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Estimating Software Effort with Minimum Features Using Neural Functional Approximation
The aim of this study is to improve software effort estimation by incorporating straightforward mathematical principles and artificial neural network technique. Our process consists of three major steps. The first step concerns data preparation from each considered database. The second step is to reduce the number of given features by considering only those relevant ones. The final step is to transform the problem of estimating software effort to the problems of classification and functional approximation by using a feedforward neural network. Experimental data are taken from well-known public domains. The results are systematically compared with related prior works using only a few features so obtained, yet demonstrate that the proposed model yields satisfactory estimation accuracy based on MMRE and PRED measures.
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