首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Incremental regularized Data Density-Based Clustering neural networks to aid in the construction of effort forecasting systems in software development
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Incremental regularized Data Density-Based Clustering neural networks to aid in the construction of effort forecasting systems in software development

机译:基于渐进的基于数据密度的聚类神经网络,帮助努力建设软件开发中的努力预测系统

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摘要

The challenge of reducing complexity, failures and time in software development are tasks found in the vast majority of information technology companies. The professionals seek to structure the development of applications through agile methodologies, but in reality, there are several difficulties in planning the time to make applications development tasks. To help in this situation, this paper proposes the use of fuzzy neural network composed by fuzzy rules to assist in the construction of a specialist system based on interpretable rules, facilitating the prediction of software development hours according to the complexity of the elements present in the project. To support in the data fuzzification process, an incremental density technique is proposed for the first layer of the model. To improve the sensitivity of the neuron present in the neural network a Leaky-ReLU type activation function is used to obtain the results. The set of rules to be created, through tests in a real database based on the technique of use case point, can help in the development of future expert systems, to be used by these professionals. The results of the tests were efficient to generate predictability about the efforts to build the software.
机译:减少复杂性,失败和软件开发时间的挑战是绝大多数信息技术公司中的任务。专业人士寻求通过敏捷方法构建应用程序的发展,但实际上,规划制作应用程序开发任务的时间存在几个困难。为了帮助在这种情况下,本文提出了使用模糊规则组成的模糊神经网络,以协助基于可解释规则构建专业系统,促进根据存在的元素的复杂性的软件开发时间预测项目。为了支持数据模糊化过程,提出了一种模型第一层的增量密度技术。为了提高神经网络中存在的神经元的敏感性,使用泄漏 - Relu型激活函数来获得结果。通过基于使用案例点技术的真实数据库中的测试来创建的一组规则可以帮助这些专业人员使用未来的专家系统的开发。测试结果是有效的,以产生有关构建软件的努力的可预测性。

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