Journal of Network and Computer Applications
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* Dữ liệu chỉ mang tính chất tham khảo
Sắp xếp:
A systematic review on clustering and routing techniques based upon LEACH protocol for wireless sensor networks
Journal of Network and Computer Applications - Tập 36 - Trang 623-645 - 2013
Efficient location privacy algorithm for Internet of Things (IoT) services and applications
Journal of Network and Computer Applications - Tập 89 - Trang 3-13 - 2017
Introducing hypermedia composites to WWW
Journal of Network and Computer Applications - Tập 22 - Trang 19-32 - 1999
Sequence-to-sequence learning for link-scheduling in D2D communication networks
Journal of Network and Computer Applications - Tập 212 - Trang 103567 - 2023
Routing protocols based on node mobility for Underwater Wireless Sensor Network (UWSN): A survey
Journal of Network and Computer Applications - Tập 78 - Trang 242-252 - 2017
On cloud security attacks: A taxonomy and intrusion detection and prevention as a service
Journal of Network and Computer Applications - Tập 74 - Trang 98-120 - 2016
Supporting secure spectrum sensing data transmission against SSDH attack in cognitive radio ad hoc networks
Journal of Network and Computer Applications - Tập 72 - Trang 140-149 - 2016
A new analytical model of TCP Hybla for satellite IP networks
Journal of Network and Computer Applications - Tập 124 - Trang 137-147 - 2018
The rise of machine learning for detection and classification of malware: Research developments, trends and challenges
Journal of Network and Computer Applications - Tập 153 - Trang 102526 - 2020
The struggle between security analysts and malware developers is a never-ending battle with the complexity of malware changing as quickly as innovation grows. Current state-of-the-art research focus on the development and application of machine learning techniques for malware detection due to its ability to keep pace with malware evolution. This survey aims at providing a systematic and detailed overview of machine learning techniques for malware detection and in particular, deep learning techniques. The main contributions of the paper are: (1) it provides a complete description of the methods and features in a traditional machine learning workflow for malware detection and classification, (2) it explores the challenges and limitations of traditional machine learning and (3) it analyzes recent trends and developments in the field with special emphasis on deep learning approaches. Furthermore, (4) it presents the research issues and unsolved challenges of the state-of-the-art techniques and (5) it discusses the new directions of research. The survey helps researchers to have an understanding of the malware detection field and of the new developments and directions of research explored by the scientific community to tackle the problem.
#Malware detection #Feature engineering #Machine learning #Deep learning #Multimodal learning
A non-cooperative non-zero-sum game-based dependability assessment of heterogeneous WSNs with malware diffusion
Journal of Network and Computer Applications - Tập 91 - Trang 26-35 - 2017
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