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AUTOMATION OF GENERALIZED ADDITIVE NEURAL NETWORKS FOR PREDICTIVE DATA MINING

机译:预测数据挖掘的通用加法神经网络自动化

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摘要

For a new technology to make the step from experimental technology to mainstream technology, tools need to be created to facilitate the use of the developed technology in the envisaged application area. Generalized additive neural networks provide an attractive framework that shows promise in the field of predictive data mining. However, the construction of such networks is very time consuming and subjective, because it depends on the user to interpret partial residual plots and to make changes in the neural network architecture. For this technology to be accepted as a serious modeling option in the field of predictive data mining the construction process needs to be automated and the benefits of using the technique must be clearly illuminated. This article shows how intelligent search may be used to replace subjective human judgment with objective criteria and make generalized additive neural networks an attractive option for the modeler.
机译:为了使新技术从实验技术迈向主流技术,需要创建工具以促进在预期的应用领域中使用已开发的技术。广义加性神经网络提供了一个有吸引力的框架,该框架显示了在预测数据挖掘领域的前景。但是,此类网络的构建非常耗时且主观,因为它取决于用户来解释部分残差图并进行神经网络体系结构的更改。为了使该技术被接受为预测数据挖掘领域中的一种重要的建模方法,需要使施工过程自动化,并且必须清楚地阐明使用该技术的好处。本文介绍了如何使用智能搜索以客观标准代替人为的主观判断,并使广义加性神经网络成为建模者的诱人选择。

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  • 来源
    《Applied Artificial Intelligence 》 |2011年第7期| p.380-425| 共46页
  • 作者单位

    Centre for Business Mathematics and Informatics, North-West University, Potchefstroom,South Africa;

    School for Computer, Statistical and Mathematical Sciences, North-West University,Potchefstroom, South Africa;

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