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An Efficient Decision Support Model Based on Ensemble Framework of Data Mining Features Assortment Classification Process

机译:基于数据挖掘特征分类与分类过程集成框架的高效决策支持模型

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摘要

Over past decades, to expand the fitness and success of verdict a bunch of decision support models on the base of data mining classification techniques has proposed by numerous researchers. However, introduced practices have benefited the users in different ways but due to inadequate build procedure, use of solitary classification technique or incorporate the functionality of arbitrarily picked methods into a single practice each approach face dissimilar complexity and fail to obtain utmost results with different state of affairs. The selection of the appropriate classification algorithm for a given data-set is an important and complex issue, full of research challenges. On the other hand building different model for dissimilar data sets increase cost and time with lacking of correctness. This dilemma of accessible decision support systems has considered into this paper by proposing a new dynamic ensemble framework of data mining classification method with condensed feature selection procedure. The experimental results depicts that proposed approach has produce more precise outcomes in comparison of classical approaches.
机译:在过去的几十年中,为扩大判决的适用性和成功性,许多研究人员提出了一系列基于数据挖掘分类技术的决策支持模型。但是,引入的实践以不同的方式使用户受益,但是由于构建过程不充分,使用单独的分类技术或将任意选择的方法的功能合并到单个实践中,每种方法都面临着不同的复杂性,并且在不同状态下无法获得最大的结果。事务。为给定的数据集选择合适的分类算法是一个重要而复杂的问题,充满了研究挑战。另一方面,为不同的数据集建立不同的模型会增加成本和时间,而缺乏正确性。通过提出一种新的具有凝聚特征选择过程的数据挖掘分类方法动态集成框架,已经考虑了无障碍决策支持系统的困境。实验结果表明,与经典方法相比,该方法具有更精确的结果。

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