Title of article :
RGC: A new conceptual clustering algorithm for mixed incomplete data sets
Author/Authors :
Aurora Pons-Porrata، نويسنده , , A and Ruiz-Shulcloper، نويسنده , , J and Martيnez-Trinidad، نويسنده , , J.F، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
In this paper, a new conceptual algorithm for the conceptual analysis of mixed incomplete data sets is introduced. This is a logical combinatorial pattern recognition (LCPR) based tool for the conceptual structuralization of spaces. Starting from the limitations of the elaborated conceptual algorithms, our laboratories are working in the application of the methods, the techniques, and in general, the philosophy of the logical combinatorial pattern recognition with the task to improve those limitations. An extension of Michalskiʹs concept of l-complex for any similarity measure, a generalization operator for symbolic variables, and an extension of Michalskiʹs refunion operator are introduced. Finally, the performance of the RGC algorithm is analyzed. A comparison with several known conceptual algorithms is presented.
Keywords :
Conceptual algorithms , Logical combinatorial pattern recognition , Data analysis , Refunion operator , Generalization rules
Journal title :
Mathematical and Computer Modelling
Journal title :
Mathematical and Computer Modelling