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Assisting Data Mining through Automated Planning

机译:通过自动计划协助数据挖掘

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The induction of knowledge from a data set relies in the execution of multiple data mining actions: to apply filters to clean and select the data, to train different algorithms (clustering, classification, regression, association), to evaluate the results using different approaches (cross validation, statistical analysis), to visualize the results, etc. In a real data mining process, previous actions are executed several times, sometimes in a loop, until an accurate result is obtained. However, performing previous tasks requires a data mining engineer or expert which supervises the design and evaluate the whole process. The goal of this paper is to describe MOLE, an architecture to automatize the data mining process. The architecture assumes that the data mining process can be seen from a classical planning perspective, and hence, that classical planning tools can be used to design the process. MOLE is built and instantiated on the basis of i) standard languages to describe the data set and the data mining process; ii) available tools to design, execute and evaluate the data mining processes.
机译:来自数据集的知识归纳依赖于执行多个数据挖掘操​​作:应用过滤器来清理和选择数据,训练不同的算法(聚类,分类,回归,关联),使用不同的方法评估结果(在实际的数据挖掘过程中,先前的操作会执行几次,有时会循环执行,直到获得准确的结果为止。但是,执行先前的任务需要数据挖掘工程师或专家来监督设计并评估整个过程。本文的目的是描述MOLE,一种可自动执行数据挖掘过程的体系结构。该体系结构假定可以从经典计划的角度看待数据挖掘过程,因此可以使用经典计划工具来设计过程。 MOLE是在以下基础上构建和实例化的:i)标准语言,用于描述数据集和数据挖掘过程; ii)设计,执行和评估数据挖掘过程的可用工具。

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