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Pushing Visualization Effects into Pushed Schema Enumerated Tree-Based Support Constraints

机译:将可视化效果推入推送的模式枚举基于树的支持约束

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Based on the datasets from UCI and Obstructive Sleep Apnea, a disparate methodology of uncovering the visualization effects into the pushed support constraints of schema enumerated tree-based classification techniques is proposed and presented in this paper. This is to actively 'wipe out' the redundant growing effects of decision trees through itemset generation when visualization techniques are applied using Principal Component Analysis (PCA) and/or Principal Component Variable Grouping (PCVG) algorithms. Enumeration specification is based on the schema enumerated tree (SET) drawn after sorting out the features and characteristics on each dataset applied. The linchpin is to streamline the pre-tree classification effects for post-tree classification by using visualization techniques, i.e. PCA and/or PCVG, which are applied during the SET development. The over-fitting effects done during the SET development by the pushed support constraints can be counter-corrected by fewer PCA and/or PCVG imposed during visualization processes. The under-fitting effects done by the imprecise 'early stopping' of the SET development can be counter-corrected by greater PCA and/or PCVG imposed during the post-tree classification techniques through pushed SET support constraint learning. Research outcome on all the investigated datasets showed that the prediction accuracies have been profoundly improved after applying visualization of PCA and/or PCVG algorithms into the pushed SET-based or SET-based support constraints.
机译:基于来自UCI和阻塞性睡眠呼吸暂停的数据集,提出了一种不同的方法,将可视化效应揭示到示范基于树的分类技术的推动的基于树的分类技术的推动的支持约束。当使用主成分分析(PCA)和/或主成分变量分组(PCVG)算法应用可视化技术时,这将主动“消除”决策树的冗余生长效果。枚举规范基于模式枚举的树(SET)在排除所应用的每个数据集上的特征和特征后绘制。 Linchpin是通过使用可视化技术,即PCA和/或PCVG来简化树木分类的预树分类效果,即在集合开发期间应用。通过推动的支持约束的设置开发期间完成的过拟合效果可以通过在可视化过程期间施加的更少的PCA和/或PCVG来反校正。通过推动的集合支持约束学习,通过推动的Set Support Constraint学习在树木后分类技术中施加的更大PCA和/或PCVG来对所设定开发的“早期停止”进行的拟合效果可以反校正。所有调查数据集的研究结果表明,在将PCA和/或PCVG算法的可视化应用于推式的基于或基于集的支持约束之后,预测精度已经深入地改善。

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