Internet Service Providers gather vast amounts of data in the form of trouble tickets created from connectivity related issues. This data is often stored and seldom used for proactive purposes. This thesis explores the feasibility of finding correlations in network support data through the use of data mining activities. Correlations such as these could be used for improving troubleshooting or staffing related activities. The approach uses the data mining methodology CRISP-DM to investigate typical data mining operations from the perspective of a Network Operation Center. The results show that correlations between the solving time and other ticket related attributes do exist and that support data could be used for the activities mentioned. T...
The control of communication networks is an important aspect from both the service provider and user...
More than ever, businesses heavily rely on IT service delivery to meet their current and frequently ...
This paper defines an advanced methodology for modeling applications based on Data Mining methods th...
In this paper we propose an application of data mining methods in the prediction of the availability...
International audienceNetwork operators often use a trouble ticket system to track all the steps of ...
Abstract. Network Data Mining identifies emergent networks between myriads of individual data items ...
Abstract. Today, computer networks are essential not only for businesses but for the whole society, ...
This work investigates the possibility of applying machine learning and data mining to the problem o...
In this thesis, the related work on data mining functions, techniques and tools are first reviewed....
Telecommunication companies generate a tremendous amount of data. These data include call detail dat...
The paper discusses an application of datamining techniques for analysis of fault information data o...
Due to increasing reliance on computer communication networks, it is highly desirable that networks ...
Network Data Mining identifies emergent networks between myriads of individual data items and utilis...
Anomaly detection is based on profiles that represent normal behavior of users, hosts or networks an...
The aim of the thesis was to study and describe data mining methodology CRISP-DM. From the collected...
The control of communication networks is an important aspect from both the service provider and user...
More than ever, businesses heavily rely on IT service delivery to meet their current and frequently ...
This paper defines an advanced methodology for modeling applications based on Data Mining methods th...
In this paper we propose an application of data mining methods in the prediction of the availability...
International audienceNetwork operators often use a trouble ticket system to track all the steps of ...
Abstract. Network Data Mining identifies emergent networks between myriads of individual data items ...
Abstract. Today, computer networks are essential not only for businesses but for the whole society, ...
This work investigates the possibility of applying machine learning and data mining to the problem o...
In this thesis, the related work on data mining functions, techniques and tools are first reviewed....
Telecommunication companies generate a tremendous amount of data. These data include call detail dat...
The paper discusses an application of datamining techniques for analysis of fault information data o...
Due to increasing reliance on computer communication networks, it is highly desirable that networks ...
Network Data Mining identifies emergent networks between myriads of individual data items and utilis...
Anomaly detection is based on profiles that represent normal behavior of users, hosts or networks an...
The aim of the thesis was to study and describe data mining methodology CRISP-DM. From the collected...
The control of communication networks is an important aspect from both the service provider and user...
More than ever, businesses heavily rely on IT service delivery to meet their current and frequently ...
This paper defines an advanced methodology for modeling applications based on Data Mining methods th...