Predictive data mining models in the tests of propelling charges

Dariusz Ampuła
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Abstract

In the article, in the introduction, the concept of predictive data mining models and was defined and the purpose of the article was specified. Then, the method of building predic-tive models was characterized and the elements of ammunition were indicated, the test results of which were prepared for the building of models, and the types of ammunition in which the propellant charge is present were indicated. The results of building four data mining models are presented. Predictive models for C&RT, CHAID and exhaustive CHAID decision trees were designed and built. The fourth model analyzed was the SANN model, i.e. the model of neural networks. For each of the tree models, a schema of the designed tree, the rate of false predictions and the parameters of goodness of fit of the built models are shown. For the SANN model, the parameters of the selected neural network were addi-tionally characterized. An analysis of the built models was made and, based on the ob-tained results, the best designed predictive data mining model was indicated. At the end, the graphical form of the workspace predefined by the GC Advanced Comprehensive Classifiers project is shown.
推进装药试验中的预测数据挖掘模型
在本文的引言部分,对预测数据挖掘模型和预测数据挖掘模型的概念进行了定义,并明确了本文的目的。然后,对建立预测模型的方法进行了表征,指出了弹药的要素,为模型的建立准备了试验结果,并指出了存在推进剂装药的弹药类型。给出了构建四种数据挖掘模型的结果。设计并建立了C&RT、CHAID和穷举CHAID决策树的预测模型。分析的第四个模型是SANN模型,即神经网络模型。对于每个树模型,给出了设计树的模式、错误预测率和构建模型的拟合优度参数。对于SANN模型,对所选神经网络的参数进行了附加表征。对所建模型进行了分析,并在此基础上提出了最佳设计的预测数据挖掘模型。最后,展示了GC高级综合分类器项目预定义的工作空间的图形形式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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