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Optimal tree led approach for effective decision making to mitigate mortality rates in a varied demographic dataset

机译:用于减轻各种人口数据集中死亡率的有效决策的最佳树立LED方法

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Decision trees always have been a data structure of choice for taking decisions under various conditions and often provide elegant decision making to resolve complex conditional problems. Optimality is a condition under which parameters of interest have to either minimized or maximized. The principle of Pareto Optimality when applied to test the worth of solution nodes in a decision tree provide for a designated conditional approach to optimize the state reported in the solution nodes. In this paper, an effort has been made to test the leaf nodes of decision trees created by three different condition sets applied on a huge dataset having in excess of 106 entries with multiple attributes using Pareto Optimality principle. The results produced by Pareto Optimality Operator thus designed clearly demarcates the conditions under which the casualty rates can be minimized.
机译:决策树始终是在各种条件下进行决策的选择的数据结构,并且通常提供优雅的决策来解决复杂的条件问题。最优性是感兴趣的参数必须最小化或最大化的条件。帕累托最优性在应用于测试决策树中的解决方案节点的原理提供了指定的条件方法,以优化解决方案节点中报告的状态。在本文中,已经努力测试由使用帕累托最优原理的多个属性超过106个条目的庞大数据集上应用的三种不同条件集创建的决策树的叶节点。由Pareto最优算子生产的结果如此设计清楚地划分了可以最小化伤员率的条件。

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