In this paper we propose a frameworks for identifying patterns and regularities in the pseudo-anonymized Call Data Records (CDR) pertaining a generic subscriber of a mobile operator. We face the challenging task of automatically deriving meaningful information from the available data, by using an unsupervised procedure of cluster analysis and without including in the model any a priori knowledge on the applicative context. Clusters mining results are employed for understanding users' habits and to draw their characterizing profiles. We propose two implementations of the data mining procedure; the first is based on a novel system for clusters and knowledge discovery called LD-ABCD, capable of retrieving clusters and, at the same time, to automatically discover for each returned cluster the most appropriate dissimilarity measure (local metric). The second approach instead is based on PROCLUS, the well-know subclustering algorithm. The dataset under analysis contains records characterized only by few features and, consequently, we show how to generate additional fields which describe implicit information hidden in data. Finally, we propose an effective graphical representation of the results of the data-mining procedure, which can be easily understood and employed by analysts for practical applications.

Identifying user habits through data mining on call data records / Bianchi, FILIPPO MARIA; Rizzi, Antonello; Sadeghian, Alireza; Moiso, Corrado. - In: ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE. - ISSN 0952-1976. - STAMPA. - 54:(2016), pp. 49-61. [10.1016/j.engappai.2016.05.007]

Identifying user habits through data mining on call data records

BIANCHI, FILIPPO MARIA;RIZZI, Antonello;
2016

Abstract

In this paper we propose a frameworks for identifying patterns and regularities in the pseudo-anonymized Call Data Records (CDR) pertaining a generic subscriber of a mobile operator. We face the challenging task of automatically deriving meaningful information from the available data, by using an unsupervised procedure of cluster analysis and without including in the model any a priori knowledge on the applicative context. Clusters mining results are employed for understanding users' habits and to draw their characterizing profiles. We propose two implementations of the data mining procedure; the first is based on a novel system for clusters and knowledge discovery called LD-ABCD, capable of retrieving clusters and, at the same time, to automatically discover for each returned cluster the most appropriate dissimilarity measure (local metric). The second approach instead is based on PROCLUS, the well-know subclustering algorithm. The dataset under analysis contains records characterized only by few features and, consequently, we show how to generate additional fields which describe implicit information hidden in data. Finally, we propose an effective graphical representation of the results of the data-mining procedure, which can be easily understood and employed by analysts for practical applications.
2016
automatic semantic interpretation; call data records; clustering; data mining; frequent substructures miner; knowledge discovery; subspace clustering; control and systems engineering; artificial Intelligence; electrical and electronic engineering
01 Pubblicazione su rivista::01a Articolo in rivista
Identifying user habits through data mining on call data records / Bianchi, FILIPPO MARIA; Rizzi, Antonello; Sadeghian, Alireza; Moiso, Corrado. - In: ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE. - ISSN 0952-1976. - STAMPA. - 54:(2016), pp. 49-61. [10.1016/j.engappai.2016.05.007]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/891971
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