This thesis provides a thorough examination and empirical results on the use of machine learning for predicting latency in mobile radio networks, specifically emphasizing probabilistic regression and anomaly detection tasks. After a ML-aided selection of the Key Performance Indicators that most influence the latency, different models are compared for both probabilistic regression and anomaly detection. Such models present network designers with a valuable instrument to explore the correlations that exist between particular network Key Performance Indicators and latency
Scope and Method of Study: When estimating the difference between two proportions with overdispersio...
Recent money laundering scandals, like the Danske Bank and Swedbank’s failure to mitigate money laun...
Duo to technology downscaling, embedded systems have increased in complexity and heterogeneity. Incr...
This thesis provides a thorough examination and empirical results on the use of machine learning for...
Cyber investigations often involve analysis of large volumes of log files, including network flow da...
There are many multiple-model (MM) target-tracking algorithms that are available but there has yet ...
This thesis describes research work that the author has undertaken and published in the field of ele...
Objectius de Desenvolupament Sostenible::7 - Energia Assequible i No Contaminant::7.b - Per a 2030, ...
Abstract. This thesis shows the process of creating and analyzing a machine-learning model. It goes ...
In this paper a resilient sensor network is built in order to lessen the effects of a small portion ...
IEEE802.11e standard assures to provide QoS using service differentiation mechanism over WLAN. The...
The PhD Thesis deals with the problem of forecasting in power systems, i.e., a wide topic that today...
Neural networks, trained with the backpropagation algorithm have: been applied to various classifica...
Each node in a wireless sensor network (WSN) is an inexpensive and small device with a limited sourc...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Scope and Method of Study: When estimating the difference between two proportions with overdispersio...
Recent money laundering scandals, like the Danske Bank and Swedbank’s failure to mitigate money laun...
Duo to technology downscaling, embedded systems have increased in complexity and heterogeneity. Incr...
This thesis provides a thorough examination and empirical results on the use of machine learning for...
Cyber investigations often involve analysis of large volumes of log files, including network flow da...
There are many multiple-model (MM) target-tracking algorithms that are available but there has yet ...
This thesis describes research work that the author has undertaken and published in the field of ele...
Objectius de Desenvolupament Sostenible::7 - Energia Assequible i No Contaminant::7.b - Per a 2030, ...
Abstract. This thesis shows the process of creating and analyzing a machine-learning model. It goes ...
In this paper a resilient sensor network is built in order to lessen the effects of a small portion ...
IEEE802.11e standard assures to provide QoS using service differentiation mechanism over WLAN. The...
The PhD Thesis deals with the problem of forecasting in power systems, i.e., a wide topic that today...
Neural networks, trained with the backpropagation algorithm have: been applied to various classifica...
Each node in a wireless sensor network (WSN) is an inexpensive and small device with a limited sourc...
In mathematics and computer science, solving an optimization problem is to find the best solution fr...
Scope and Method of Study: When estimating the difference between two proportions with overdispersio...
Recent money laundering scandals, like the Danske Bank and Swedbank’s failure to mitigate money laun...
Duo to technology downscaling, embedded systems have increased in complexity and heterogeneity. Incr...