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首页> 外文期刊>International journal of fuzzy system applications >Clustering Hybrid Data Using a Neighborhood Rough Set Based Algorithm and Expounding its Application
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Clustering Hybrid Data Using a Neighborhood Rough Set Based Algorithm and Expounding its Application

机译:使用基于邻域粗糙集的算法群集混合数据并阐述其应用程序

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摘要

In recent times, an enumerable number of clustering algorithms have been developed whose main function is to make sets of objects have almost the same features. But due to the presence of categorical data values, these algorithms face a challenge in their implementation. Also, some algorithms which are able to take care of categorical data are not able to process uncertainty in the values and therefore have stability issues. Thus, handling categorical data along with uncertainty has been made necessary owing to such difficulties. So, in 2007 an MMR algorithm was developed which was based on basic rough set theory. MMeR was proposed in 2009 which surpassed the results of MMR in taking care of categorical data but cannot be used robustly for hybrid data. In this article, the authors generalize the MMeR algorithm with neighborhood relations and make it a neighborhood rough set model which this article calls MMeNR (Min Mean Neighborhood Roughness). It takes care of the heterogeneous data. Also, the authors have extended the MMeNR method to make it suitable for various applications like geospatial data analysis and epidemiology.
机译:最近,已经开发了枚举次数的群集算法,其主要功能是使一组对象具有几乎相同的功能。但由于存在分类数据值,这些算法在实现中面临挑战。此外,能够处理分类数据的一些算法不能处理值中的不确定性,因此具有稳定性问题。因此,由于这种困难,已经为处理分类数据以及不确定性。因此,在2007年,开发了基于基本粗糙集理论的MMR算法。 MMER是2009年提出的,它超越了MMR的结果,在处理分类数据时,但不能稳健地用于混合数据。在本文中,作者将MMER算法概括了邻域关系,使其成为本文称MMENR(最小邻域粗糙度)的邻域粗糙集模型。它负责异构数据。此外,作者还扩展了MMENR方法,使其适用于地理空间数据分析和流行病学等各种应用。

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