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Enhanced Software Effort Estimation Using Multi Layered Feed Forward Artificial Neural Network Technique

机译:使用多层前馈人工神经网络技术的增强软件工作量估计

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Software Effort Estimation models are hot topic of study over 3 decades. Several models have been developed in these decades. Providing accurate estimations of software is still very challenging. The major reason for such disappointments in projects are because of inaccurate software development norms; effort estimation is one such practice. Dynamically fluctuating environment of technology in software development industry make effort estimation further perplexing. One of the most commonly used algorithmic model for estimating effort in industry is COCOMO. Capability of machine learning particularly Artificial Neural Networks is to adjust a complex set of bond among the various independent and dependent variables. The paper proposes usage of ANN (Artificial Neural Network) based model technologically advanced using Multi Layered Feed Forward Neural Network which is given training with Back Propagation training method. COCOMO data-set is accustomed to test and train the network. Mean-Square-Error (MSE) and Mean Magnitude of Relative-Error (MMRE) are used as performance measurement indices. The experiment outputs suggest that the suggested model can provide better results and accurately forecast the software development effort.
机译:软件工作量估计模型是3年来研究的热门话题。在这几十年中已经开发了几种模型。提供准确的软件估算仍然非常困难。项目中令人失望的主要原因是由于软件开发规范不正确;努力估算就是这样一种实践。软件开发行业中技术动态变化的环境使工作量估算变得更加困惑。 COCOMO是最常用的估算行业工作量的算法模型之一。机器学习的能力,尤其是人工神经网络的能力,是在各种独立和因变量之间调整一组复杂的键。提出了利用多层前馈神经网络技术先进的ANN(人工神经网络)模型的方法,该模型采用反向传播训练方法进行训练。 COCOMO数据集习惯于测试和培训网络。均方误差(MSE)和相对误差的平均幅度(MMRE)用作性能测量指标。实验结果表明,所建议的模型可以提供更好的结果并准确预测软件开发工作。

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