Planning of current and future mobile networks is becoming increasingly complex due to the heterogeneity of deployments, which feature not only macrocells, but also an underlying layer of small cells whose deployment is not fully under the control of the operator. In this paper, we focus on selecting the most appropriate Quality of Service (QoS) prediction techniques for assisting network operators in planning future dense deployments. We propose to use machine learning as a tool to extract the relevant information from the huge amount of data generated in current 4G and future 5G networks during normal operation, which is then used to appropriately plan networks. In particular, we focus on radio measurements to develop correlative statisti...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
Abstract: Monitoring and providing customers with a satisfying Quality of Experience (QoE) is a cru...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Network performance prediction is crucial for enabling agile capacity planning in mobile networks. O...
Monitoring and providing customers with a satisfying Quality of Experience (QoE) is a crucial busine...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
Abstract: Monitoring and providing customers with a satisfying Quality of Experience (QoE) is a cru...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
Planning of current and future mobile networks is becoming increasingly complex due to the heterogen...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
In the coming years, planning future mobile networks will be infinitely more complex than nowadays. ...
Planning future mobile networks entails multiple challenges due to the high complexity of the networ...
Network performance prediction is crucial for enabling agile capacity planning in mobile networks. O...
Monitoring and providing customers with a satisfying Quality of Experience (QoE) is a crucial busine...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...
Abstract: Monitoring and providing customers with a satisfying Quality of Experience (QoE) is a cru...
This paper aims to find patterns of knowledge from physical layer data coming from Heterogeneous Lon...