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Post Mining of Diversified Multiple Decision Trees for Actionable Knowledge Discovery

机译:事后挖掘可操作的知识发现的多种决策树

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摘要

Most data mining algorithms and tools when applied to industrial problems such as Customer Relationship Management, insurance and banking they stop search at producing actual applicable knowledge. Unlike these models, actionable knowledge discovery techniques are useful in pointing out customers who are likely attritors and loyal. However, actionable knowledge discovery techniques require human experts to postprocess the discovered knowledge manually. Postprocessing is one of the actionable knowledge discovery techniques which are effective in decision making and overcomes considerable inefficiency which leads to human errors that are inherent in the traditional data mining systems. Hence, decision trees are postprocessed which suggest cost effective actions in order to maximize the profit based objective function. In the proposed approach, an effective actionable knowledge discovery based classification algorithm namely Actionable Multiple Decision Trees (AMDT) is developed to improve the robustness and classification accuracy and tests are conducted on UCI German benchmark data.
机译:当大多数数据挖掘算法和工具应用于诸如客户关系管理,保险和银行业等工业问题时,它们会停止搜索以产生实际的适用知识。与这些模型不同,可操作的知识发现技术在指出可能是消耗者和忠诚者的客户方面很有用。但是,可行的知识发现技术需要人类专家手动对发现的知识进行后处理。后处理是可操作的知识发现技术之一,可以有效地进行决策,并且可以克服相当低的效率,从而导致传统数据挖掘系统固有的人为错误。因此,决策树经过后处理,提出了具有成本效益的措施,以使基于利润的目标函数最大化。在提出的方法中,开发了一种有效的基于可操作知识发现的分类算法,即可操作多决策树(AMDT),以提高鲁棒性和分类准确性,并对UCI德国基准数据进行了测试。

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