...
首页> 外文期刊>Information Sciences: An International Journal >A method of relational fuzzy clustering based on producing feature vectors using FastMap
【24h】

A method of relational fuzzy clustering based on producing feature vectors using FastMap

机译:一种使用FastMap产生特征向量的关系模糊聚类方法

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

The first stage of organizing objects is to partition them into groups or clusters. The clustering is generally done on individual object data representing the entities such as feature vectors or on object relational data incorporated in a proximity matrix. This paper describes another method for finding a fuzzy membership matrix that provides cluster membership values for all the objects based strictly on the proximity matrix. This is generally referred to as relational data clustering. The fuzzy membership matrix is found by first finding a set of vectors that approximately have the same inter-vector Euclidian distances as the proximities that are provided. These vectors can be of very low dimension such as 5 or less. Fuzzy c-means (FCM) is then applied to these vectors to obtain a fuzzy membership matrix. In addition two-dimensional vectors are also created to provide a visual representation of the proximity matrix. This allows comparison of the result of automatic clustering to visual clustering. The method proposed here is compared to other relational clustering methods including NERFCM, Rouben's method and Windhams A-P method. Various clustering quality indices are also calculated for doing the comparison using various proximity matrices as input. Simulations show the method to be very effective and no more computationally expensive than other relational data clustering methods. The membership matrices that are produced by the proposed method are less crisp than those produced by NERFCM and more representative of the proximity matrix that is used as input to the clustering process.
机译:组织对象的第一步是将它们划分为组或集群。聚类通常是在表示实体的单个对象数据(例如特征向量)上进行的,或者是在包含在邻近矩阵中的对象关系数据上进行的。本文介绍了另一种寻找模糊隶属度矩阵的方法,该方法严格基于邻近矩阵为所有对象提供聚类隶属度值。这通常称为关系数据聚类。通过首先找到一组向量,该向量近似具有与所提供的邻近点相同的向量欧几里得距离,来找到模糊隶属矩阵。这些向量的维数可能非常低,例如5或更小。然后将模糊c均值(FCM)应用于这些向量以获得模糊隶属度矩阵。另外,还创建了二维矢量以提供接近矩阵的视觉表示。这样可以将自动聚类的结果与视觉聚类的结果进行比较。本文提出的方法与其他关系聚类方法(包括NERFCM,Rouben方法和Windhams A-P方法)进行了比较。还使用各种接近度矩阵作为输入来计算各种聚类质量指标以进行比较。仿真表明,该方法非常有效,并且与其他关系数据聚类方法相比,在计算上没有更多的开销。通过所提出的方法生成的隶属度矩阵比NERFCM生成的隶属度矩阵不那么清晰,并且更能代表用作聚类过程输入的邻近矩阵。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号