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Multiple neural networks coupled with oblique decision trees: a case study on the configuration design of midship structure

机译:多个神经网络与斜决策树相结合:中间结构配置设计的案例研究

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The paper is concerning the development of multiple neural networks system of problem domains where the complete input space can be decomposed into several different regions, and these are known prior to training neural networks. The authors adopt an oblique decision tree to represent the divided input space and select an appropriate subnetworks, each of which is trained over a different region of input space. The overall architecture of the multiple neural network system, called the federated architecture, consists of a facilitator, normal subnetworks, and "tile" networks. The role of a facilitator is to choose the subnetwork that is suitable for the given input data using information obtained from decision tree. However, if input data is close enough to the boundaries of regions, there is a large possibility of selecting the invalid subnetwork due to the incorrect prediction of decision tree. When such a situation is encountered, the facilitator selects a "tile" network that is trained closely to the boundaries of a partitioned input space, instead of a normal subnetwork. In this way, it is possible to reduce the large error of neural networks at zones close to borders of regions. Validation of the approach is examined and verified by applying the federated neural network system to the configuration design of a midship structure.
机译:本文涉及多个神经网络的开发问题域,其中完整的输入空间可以分解成几个不同的区域,并且这些是在训练神经网络之前已知的。作者采用倾斜决策树来表示分割输入空间并选择适当的子网,每个子网都在输入空间的不同区域上培训。多个神经网络系统的整体架构,称为联合架构,包括辅导员,普通子网和“瓦片”网络组成。辅导员的作用是选择适用于使用从决策树获得的信息的给定输入数据的子网。但是,如果输入数据足够接近区域的边界,则由于决策树的预测不正确,可以选择无效的子网。当遇到这样的情况时,辅导员选择一个“瓦片”网络,该网络被仔细培训到分区输入空间的边界,而不是正常的子网。以这种方式,可以在接近区域边框的区域中降低神经网络的大误差。通过将联合的神经网络系统应用于中间结构的配置设计来检查和验证该方法的验证。

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