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Evaluation of an integrated Knowledge Discovery and Data Mining process model

机译:评估集成的知识发现和数据挖掘过程模型

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摘要

Data Mining projects are implemented by following the knowledge discovery process. This process is highly complex and iterative in nature and comprises of several phases, starting off with business understanding, and followed by data understanding, data preparation, modeling, evaluation and deployment or implementation. Each phase comprises of several tasks. Knowledge Discovery and Data Mining (KDDM) process models are meant to provide prescriptive guidance towards the execution of the end-to-end knowledge discovery process, i.e. such models prescribe how exactly each one of the tasks in a Data Mining project can be implemented. Given this role, the quality of the process model used, affects the effectiveness and efficiency with which the knowledge discovery process can be implemented and therefore the outcome of the overall Data Mining project. This paper presents the results of the rigorous evaluation of the Integrated Knowledge Discovery and Data Mining (IKDDM) process model and compares it to the CRISP-DM process model. Results of statistical tests confirm that the IKDDM leads to more effective and efficient implementation of the knowledge discovery process.
机译:通过遵循知识发现过程来实施数据挖掘项目。此过程本质上是高度复杂和迭代的,并且包括几个阶段,从业务理解开始,然后是数据理解,数据准备,建模,评估和部署或实施。每个阶段都包含几个任务。知识发现和数据挖掘(KDDM)过程模型旨在为端到端知识发现过程的执行提供规范指导,即此类模型规定了如何精确实施数据挖掘项目中的每个任务。鉴于此作用,所使用的过程模型的质量会影响知识发现过程可以实施的有效性和效率,从而影响整个数据挖掘项目的结果。本文介绍了对集成知识发现和数据挖掘(IKDDM)过程模型进行严格评估的结果,并将其与CRISP-DM过程模型进行了比较。统计测试的结果证实,IKDDM可以更有效地实施知识发现过程。

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