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Titlebook: Artificial Intelligence for Cybersecurity; Mark Stamp,Corrado Aaron Visaggio,Fabio Di Troia Book 2022 The Editor(s) (if applicable) and Th

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发表于 2025-3-21 20:04:35 | 显示全部楼层 |阅读模式
期刊全称Artificial Intelligence for Cybersecurity
影响因子2023Mark Stamp,Corrado Aaron Visaggio,Fabio Di Troia
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发行地址Presents new and novel applications for AI technology within the context of cybersecurity.Explores and conquers issues and obstacles that the AI field is tackling within the context of cybersecurity.T
学科分类Advances in Information Security
图书封面Titlebook: Artificial Intelligence for Cybersecurity;  Mark Stamp,Corrado Aaron Visaggio,Fabio Di Troia Book 2022 The Editor(s) (if applicable) and Th
影响因子.This book explores new and novel applications of machine learning, deep learning, and artificial intelligence that are related to major challenges in the field of cybersecurity. The provided research goes beyond simply applying AI techniques to datasets and instead delves into deeper issues that arise at the interface between deep learning and cybersecurity..This book also provides insight into the difficult "how" and "why" questions that arise in AI within the security domain. For example, this book includes chapters covering "explainable AI", "adversarial learning", "resilient AI", and a wide variety of related topics. It’s not limited to any specific cybersecurity subtopics and the chapters touch upon a wide range of cybersecurity domains, ranging from malware to biometrics and more..Researchers and advanced level students working and studying in the fields of cybersecurity (equivalently, information security) or artificial intelligence (including deep learning, machine learning, big data, and related fields) will want to purchase this book as a reference. Practitioners working within these fields will also be interested in purchasing this book..
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https://doi.org/10.1007/978-1-349-15821-8ieving state-of-the-art results in many areas, it also has drawbacks exploited by many with white-box attacks. Although the white-box scenario is possible in malware detection, the detailed structure of antivirus is often unknown. Consequently, we focused on a pure black-box setup where no informati
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https://doi.org/10.1007/978-3-642-35822-7ich uniquely distinguishes it from other typical malware threats. The C&C server sends commands to the botnets to execute malicious activities using common Internet protocols, such as Hypertext transfer (HTTP), and Internet Relay Chat (IRC). Since these protocols are common, detecting botnet activit
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Class D Results and Simulations,r hand, the results can be hard to understand as to why a model classified a given file as malicious or benign. This paper focuses on the interpretability of machine learning models’ results using decision lists generated by two rule-based classifiers, I-REP and RIPPER. We use the EMBER dataset, whi
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Class D Results and Simulations,ntrol the propagation in mobile devices. According to Damballa’s Q4 State of Infections report, the antivirus products overlooked 70% of malware signatures within the first hour (Q4 2014 State of Infections Report. Q4 2014 state of infections report. ., accessed August 2021). This is despite the fac
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https://doi.org/10.1007/978-3-031-40419-1gs generated by BERT. We extract the “words” directly from the malware samples to achieve multi-class classification. In fact, the attention mechanism of a pre-trained BERT model can be used in malware classification by capturing information about the relation between each opcode and every other opc
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