Abstract

Today’s advancements in wireless communication technologies have resulted in a tremendous volume of data being generated. Most of our information is part of a widespread network that connects various devices across the globe. The capabilities of electronic devices are also increasing day by day, which leads to more generation and sharing of information. Similarly, as mobile network topologies become more diverse and complicated, the incidence of security breaches has increased. It has hampered the uptake of smart mobile apps and services, which has been accentuated by the large variety of platforms that provide data, storage, computation, and application services to end-users. It becomes necessary in such scenarios to protect data and check its use and misuse. According to the research, an artificial intelligence-based security model should assure the secrecy, integrity, and authenticity of the system, its equipment, and the protocols that control the network, independent of its generation, in order to deal with such a complicated network. The open difficulties that mobile networks still face, such as unauthorised network scanning, fraud links, and so on, have been thoroughly examined. Numerous ML and DL techniques that can be utilised to create a secure environment, as well as various cyber security threats, are discussed. We address the necessity to develop new approaches to provide high security of electronic data in mobile networks because the possibilities for increasing mobile network security are inexhaustible.

Highlights

  • A Systematic Review on Machine Learning and Deep LearningChaitanya Gupta 1 , Ishita Johri 2 , Kathiravan Srinivasan 1 , Yuh-Chung Hu 3 , Saeed Mian Qaisar 4 and Kuo-Yi Huang 5, *

  • Electronic information is an asset for any organisation, and even in the case of an individual, their data can be quite significant to them, which they cannot afford to lose.Information security has become very important in today’s computing world, and it demands potential counters to ever-evolving threats

  • We provide a comprehensive study on the various machine learning and deep learning models used for electronic information security in mobile networks

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Summary

A Systematic Review on Machine Learning and Deep Learning

Chaitanya Gupta 1 , Ishita Johri 2 , Kathiravan Srinivasan 1 , Yuh-Chung Hu 3 , Saeed Mian Qaisar 4 and Kuo-Yi Huang 5, *.

Introduction
Contribution of This Survey
Search Strategy and Literature Sources
Inclusion Criteria
Results
Structure of this Survey
The Evolution and Overview of Machine Learning and Deep Learning Models
Machine Learning and Deep Learning Models Used in Electronic Information
Machine Learning Techniques
Artificial Neural Network
Naïve Bayes
Decision Tree
K-Nearest Neighbour
K-Means Clustering
Random Forest
Support Vector Machine
Ensemble Models
Machine Learning Models for Electronic Information Security
Nomenclature
Limitations
Deep Learning Models
Recurrent Neural Networks
Deep Autoencoder
Long Short-Term Memory
Deep Neural Network
Deep Belief Network
Deep Convolutional Neural Network
Deep Generative Models
Deep Boltzmann Machine
Deep Reinforcement Learning
2.3.10. Extreme Learning Machine
2.3.11. Deep Learning Models for Electronic Information Security
Cyber-Attack
Open Problems-Electronic Information Security in Mobile Networks
Future Directions—Electronic Information Security in Mobile Networks
Findings
Conclusions

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