Abstract Deep learning (DL) driven proactive resource allocation (RA) is a promising approach for the efficient management of network resources. However, DL models typically have a limitation that they do not capture the uncertainty due to the arrival of new unseen samples with a distribution different than the data distribution available at DL model-training time, leading to wrong resource usage predictions. To address this, we propose a confidence aware DL solution for the robust and reliable predictions of wireless channel utilization (CU) in shared spectrum bands. We utilize an encoder-decoder based Bayesian DL model to generate prediction intervals which capture the uncertainties in wireless CU. We use the CU predictions to design a n...
The popularity of mobile broadband connectivity continues to grow and thus, the future wireless netw...
Network slicing enables 5G network operators to offer diverse services in the form of end-to-end iso...
Both caching and interference alignment (IA) are promising techniques for future wireless networks. ...
Deep Learning techniques are expected to play a key role in the development of wireless systems at t...
Accurate and efficient resource utilization predictions are of vital importance for the future gener...
The goal of this thesis is to develop a learning framework for solving resource allocation problems ...
The goal of this thesis is to develop a learning framework for solving resource allocation problems ...
A supervised-learning-based distributed resource allocation with limited information exchange is add...
Abstract—This paper introduces the novel concept of proactive resource allocation in which the predi...
Learning the channel occupancy patterns to reuse the underutilised spectrum frequencies without int...
In this paper, we propose a new Dynamic Spectrum Access (DSA) method for multi-channel wireless netw...
Deep learning has achieved remarkable breakthroughs in the past decade across a wide range of applic...
For densely deployed wireless local area networks (WLANs), this paper proposes a deep reinforcement ...
During the last century, most of the meaningful frequency bands were licensed to emerging wireless a...
We propose a holistic cognitive radio (CR) approach to tackle the coexistence problem of wireless sy...
The popularity of mobile broadband connectivity continues to grow and thus, the future wireless netw...
Network slicing enables 5G network operators to offer diverse services in the form of end-to-end iso...
Both caching and interference alignment (IA) are promising techniques for future wireless networks. ...
Deep Learning techniques are expected to play a key role in the development of wireless systems at t...
Accurate and efficient resource utilization predictions are of vital importance for the future gener...
The goal of this thesis is to develop a learning framework for solving resource allocation problems ...
The goal of this thesis is to develop a learning framework for solving resource allocation problems ...
A supervised-learning-based distributed resource allocation with limited information exchange is add...
Abstract—This paper introduces the novel concept of proactive resource allocation in which the predi...
Learning the channel occupancy patterns to reuse the underutilised spectrum frequencies without int...
In this paper, we propose a new Dynamic Spectrum Access (DSA) method for multi-channel wireless netw...
Deep learning has achieved remarkable breakthroughs in the past decade across a wide range of applic...
For densely deployed wireless local area networks (WLANs), this paper proposes a deep reinforcement ...
During the last century, most of the meaningful frequency bands were licensed to emerging wireless a...
We propose a holistic cognitive radio (CR) approach to tackle the coexistence problem of wireless sy...
The popularity of mobile broadband connectivity continues to grow and thus, the future wireless netw...
Network slicing enables 5G network operators to offer diverse services in the form of end-to-end iso...
Both caching and interference alignment (IA) are promising techniques for future wireless networks. ...