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首页> 外文期刊>Australasian Journal of Information Systems >Using Artificial Neural Networks and Function Points to Estimate 4GL Software Development Effort
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Using Artificial Neural Networks and Function Points to Estimate 4GL Software Development Effort

机译:使用人工神经网络和功能点来评估4GL软件开发的工作量

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Hie value of neural network modelling techniques in performing complicated pattern recognition and nonlinear estimation tasks has been demonstrated across an impressive spectrum of applications. Software development is a complex environment with many interrelated factors affecting development effort and productivity. Accurate forecasting has proved difficult since many of these interrelationships are not fully understood. An attempt to capture the significant attributes of the software development environment to enable improved accuracy in forecasting of development effort is made using backpropagation artificial neural networks. The data for this study was gathered from commercial 4GL software development projects, across a large range of sizes. As is typical of software developments, the range in productivity and other development factors in the data set is also large, accentuating the estimation problem. Despite these difficulties the neural network model predictions were reasonably accurate in comparison with other published results, indicating the potential of the use of this approach.
机译:神经网络建模技术在执行复杂的模式识别和非线性估计任务方面的高价值已在众多应用中得到了证明。软件开发是一个复杂的环境,其中有许多相互关联的因素会影响开发工作和生产率。由于许多相互关系还没有被完全理解,因此准确的预测已被证明是困难的。尝试使用反向传播人工神经网络来捕获软件开发环境的重要属性,以提高开发工作预测的准确性。这项研究的数据来自各种规模的商业4GL软件开发项目。作为软件开发的典型代表,数据集中生产率和其他开发因素的范围也很大,从而加剧了估计问题。尽管存在这些困难,但与其他已发布的结果相比,神经网络模型的预测还是相当准确的,这表明使用此方法的潜力。

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