Deep reinforcement learning for resource management on network slicing: A survey
JA Hurtado Sánchez, K Casilimas… - Sensors, 2022 - mdpi.com
Network Slicing and Deep Reinforcement Learning (DRL) are vital enablers for achieving
5G and 6G networks. A 5G/6G network can comprise various network slices from unique or …
5G and 6G networks. A 5G/6G network can comprise various network slices from unique or …
Robust and sparsity-aware adaptive filters: A review
An exhaustive review of adaptive signal processing schemes which are robust, sparsity-
aware and robust as well as sparsity-aware has been carried out in this paper. Conventional …
aware and robust as well as sparsity-aware has been carried out in this paper. Conventional …
Exponential distribution optimizer (EDO): a novel math-inspired algorithm for global optimization and engineering problems
M Abdel-Basset, D El-Shahat, M Jameel… - Artificial Intelligence …, 2023 - Springer
Numerous optimization problems can be addressed using metaheuristics instead of
deterministic and heuristic approaches. This study proposes a novel population-based …
deterministic and heuristic approaches. This study proposes a novel population-based …
Automatic clipping: Differentially private deep learning made easier and stronger
Per-example gradient clipping is a key algorithmic step that enables practical differential
private (DP) training for deep learning models. The choice of clipping threshold $ R …
private (DP) training for deep learning models. The choice of clipping threshold $ R …
IoT based smart monitoring of patients' with acute heart failure
The prediction of heart failure survivors is a challenging task and helps medical
professionals to make the right decisions about patients. Expertise and experience of …
professionals to make the right decisions about patients. Expertise and experience of …
[图书][B] Complex valued nonlinear adaptive filters: noncircularity, widely linear and neural models
DP Mandic, VSL Goh - 2009 - books.google.com
This book was written in response to the growing demand for a text that provides a unified
treatment of linear and nonlinear complex valued adaptive filters, and methods for the …
treatment of linear and nonlinear complex valued adaptive filters, and methods for the …
Cross-session classification of mental workload levels using EEG and an adaptive deep learning model
Z Yin, J Zhang - Biomedical Signal Processing and Control, 2017 - Elsevier
Abstract Evaluation of operator Mental Workload (MW) levels via ongoing
electroencephalogram (EEG) is quite promising in Human-Machine (HM) collaborative task …
electroencephalogram (EEG) is quite promising in Human-Machine (HM) collaborative task …
A new variable step-size NLMS algorithm and its performance analysis
HC Huang, J Lee - IEEE Transactions on Signal Processing, 2011 - ieeexplore.ieee.org
Numerous variable step-size normalized least mean-square (VSS-NLMS) algorithms have
been derived to solve the dilemma of fast convergence rate or low excess mean-square …
been derived to solve the dilemma of fast convergence rate or low excess mean-square …
Aptenodytes forsteri optimization: Algorithm and applications
Z Yang, LB Deng, Y Wang, J Liu - Knowledge-Based Systems, 2021 - Elsevier
This paper proposes a new naturally inspired swarm intelligence algorithm called the
Aptenodytes Forsteri Optimization Algorithm (AFO). The main inspiration is the emperor …
Aptenodytes Forsteri Optimization Algorithm (AFO). The main inspiration is the emperor …
Solving multi-objective optimization problem of convolutional neural network using fast forward quantum optimization algorithm: Application in digital image …
P Singh, MK Muchahari - Advances in Engineering Software, 2023 - Elsevier
Convolutional neural network (CNN) has evolved as a new algorithm that has demonstrated
its effectiveness in real-time issue solving over many other machine learning (ML) …
its effectiveness in real-time issue solving over many other machine learning (ML) …