Abstract

In this paper, a designed framework for verifying the design and symmetries in the pseudo anonymized CDR, defining a normal subscriber of a moveable operator is proposed. We describe the challenging job of automatically originating expressive information from the data available using a machine learning approach for clustering and without adding in the model any a previous knowledge of the application context. Clustering mining consequences are working for understanding the client's habits and to attract their illustrating profiles. We implement two methods of the data mining process, it is based on a new model or system for clustering and knowledge discovery called Fuzzy Logics and LD-ABCD which are capable of recovering clusters and similarity to automatically search and knowledge discovery from CDR. The data set analysis consists records of the call considered only by the few features and subsequently we define how to create additional areas which described the extraction of data. Finally, we proposed method is an effective graphical representation using data mining process which could easily understand the working for extracting knowledge from practical applications.

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