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020 _a9783030747534
_9978-3-030-74753-4
024 7 _a10.1007/978-3-030-74753-4
_2doi
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072 7 _aUTN
_2bicssc
072 7 _aCOM043050
_2bisacsh
072 7 _aUTN
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082 0 4 _a005.8
_223
245 1 0 _aHandbook of Big Data Analytics and Forensics
_h[electronic resource] /
_cedited by Kim-Kwang Raymond Choo, Ali Dehghantanha.
250 _a1st ed. 2022.
264 1 _aCham :
_bSpringer International Publishing :
_bImprint: Springer,
_c2022.
300 _aVIII, 287 p. 88 illus., 77 illus. in color.
_bonline resource.
336 _atext
_btxt
_2rdacontent
337 _acomputer
_bc
_2rdamedia
338 _aonline resource
_bcr
_2rdacarrier
347 _atext file
_bPDF
_2rda
505 0 _a1. Big data analytics and forensics: an overview -- 2. Lot privacy, security and forensics challenges: an unmanned aerial vehicle (uav) case study -- 3. Detection of enumeration attacks in cloud environments using infrastructure log data -- 4 -- Cyber threat attribution with multi-view heuristic analysis -- 5. Security of industrial cyberspace: fair clustering with linear time approximation -- 6. Adaptive neural trees for attack detection in cyber physical systems -- 7. Evaluating performance of scalable fair clustering machine learning techniques in detecting cyber-attacks in industrial control systems -- 8. Fuzzy bayesian learning for cyber threat hunting in industrial control systems -- 9. Cyber-attack detection in cyber-physical systems using supervised machine learning -- 10. Evaluation of scalable fair clustering machine learning methods for threat hunting in cyber-physical systems -- 11. Evaluation of supervised and unsupervised machine learning classifiers for mac os malware detection -- 12. Evaluation of machine learning algorithms on internet of things (iot) malware opcodes -- 13. Mac os x malware detection with supervised machine learning algorithms -- 14. Machine learning for osx malware detection -- 15. Hybrid analysis on credit card fraud detection using machine learning techniques -- 16. Mapping ckc model through nlp modelling for apt groups reports -- 17. Ransomware threat detection: a deep learning approach -- 18. Scalable fair clustering algorithm for internet of things malware classification.
520 _aThis handbook discusses challenges and limitations in existing solutions, and presents state-of-the-art advances from both academia and industry, in big data analytics and digital forensics. The second chapter comprehensively reviews IoT security, privacy, and forensics literature, focusing on IoT and unmanned aerial vehicles (UAVs). The authors propose a deep learning-based approach to process cloud’s log data and mitigate enumeration attacks in the third chapter. The fourth chapter proposes a robust fuzzy learning model to protect IT-based infrastructure against advanced persistent threat (APT) campaigns. Advanced and fair clustering approach for industrial data, which is capable of training with huge volume of data in a close to linear time is introduced in the fifth chapter, as well as offering an adaptive deep learning model to detect cyberattacks targeting cyber physical systems (CPS) covered in the sixth chapter. The authors evaluate the performance of unsupervised machine learning for detecting cyberattacks against industrial control systems (ICS) in chapter 7, and the next chapter presents a robust fuzzy Bayesian approach for ICS’s cyber threat hunting. This handbook also evaluates the performance of supervised machine learning methods in identifying cyberattacks against CPS. The performance of a scalable clustering algorithm for CPS’s cyber threat hunting and the usefulness of machine learning algorithms for MacOS malware detection are respectively evaluated. This handbook continues with evaluating the performance of various machine learning techniques to detect the Internet of Things malware. The authors demonstrate how MacOSX cyberattacks can be detected using state-of-the-art machine learning models. In order to identify credit card frauds, the fifteenth chapter introduces a hybrid model. In the sixteenth chapter, the editors propose a model that leverages natural language processing techniques for generating a mapping between APT-related reports and cyber kill chain. A deep learning-based approach to detect ransomware is introduced, as well as a proposed clustering approach to detect IoT malware in the last two chapters. This handbook primarily targets professionals and scientists working in Big Data, Digital Forensics, Machine Learning, Cyber Security Cyber Threat Analytics and Cyber Threat Hunting as a reference book. Advanced level-students and researchers studying and working in Computer systems, Computer networks and Artificial intelligence will also find this reference useful.
650 0 _aComputer networks
_xSecurity measures.
650 0 _aBig data.
650 0 _aMachine learning.
650 0 _aComputer crimes.
650 1 4 _aMobile and Network Security.
650 2 4 _aBig Data.
650 2 4 _aMachine Learning.
650 2 4 _aComputer Crime.
700 1 _aChoo, Kim-Kwang Raymond.
_eeditor.
_4edt
_4http://id.loc.gov/vocabulary/relators/edt
700 1 _aDehghantanha, Ali.
_eeditor.
_4edt
_4http://id.loc.gov/vocabulary/relators/edt
710 2 _aSpringerLink (Online service)
773 0 _tSpringer Nature eBook
776 0 8 _iPrinted edition:
_z9783030747527
776 0 8 _iPrinted edition:
_z9783030747541
776 0 8 _iPrinted edition:
_z9783030747558
856 4 0 _uhttps://doi.org/10.1007/978-3-030-74753-4
912 _aZDB-2-SCS
912 _aZDB-2-SXCS
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