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High Order Computational Intelligence in Data Mining A generic approach to systemic intelligent Data Mining

机译:数据挖掘中的高阶计算智能一种系统智能数据挖掘的通用方法

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Within this elaboration a generic system, subsequently referred to as System applying High Order Computational Intelligence in Data Mining (SHOCID), applying Computational Intelligence-paradigms, methods and techniques in the field of Data Mining, is being introduced. Currently available Data Mining systems are usually targeted on particular problem statements and require the user to understand how the underlying paradigms work, in contrary to the introduced one. SHOCID does not only fall back on complex Data Mining and Computational Intelligence techniques; it additionally does not require the user to understand how the result of a mining process is being achieved. Depending on the problem, the system is able to combine techniques and is, in some degree, able to decide on its own which strategy suits best. Within this elaboration known but adapted, as well as new approaches to Data Mining are being introduced, with focus on genericity and result-orientation for highlighting the aim of the research project: the provision of highly complex Computational Intelligence-techniques for mining data without the necessity of understanding these, implemented through a result-oriented interface and based on generic system architecture. The system's advantages are brought out by detailing one of its combinatorial data processing strategies as well as by describing algorithmically how training data for Feed Forward Artificial Neural Networks is synthesized. Finally, we provide an outline of the implemented techniques with focus on how the system makes use of them, always focusing on genericity.
机译:在此阐述中,将介绍一个通用系统,该系统随后称为在数据挖掘中应用高阶计算智能的系统(SHOCID),并在数据挖掘领域应用计算智能范式,方法和技术。当前可用的数据挖掘系统通常针对特定的问题陈述,并且要求用户了解基础范例的工作方式,与所介绍的相反。 SHOCID不仅仅依靠复杂的数据挖掘和计算智能技术;此外,它不需要用户了解采矿过程的结果是如何实现的。根据问题,系统能够组合技术,并且在某种程度上能够自行决定哪种策略最适合。在这种阐述中,引入了已知但经过改编的数据挖掘新方法,并着重于通用性和结果导向性,以突出研究项目的目标:提供高度复杂的计算智能技术,无需使用数据挖掘技术即可进行数据挖掘。必须通过面向结果的界面并基于通用系统体系结构来理解这些内容。通过详细介绍其组合数据处理策略之一以及通过算法描述前馈人工神经网络的训练数据是如何合成的,来展现该系统的优势。最后,我们概述了已实现的技术,着重于系统如何利用它们,始终侧重于通用性。

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