Description

Book Synopsis
INTELLIGENT SECURITY SYSTEMS

Dramatically improve your cybersecurity using AI and machine learning

In Intelligent Security Systems, distinguished professor and computer scientist Dr. Leon Reznik delivers an expert synthesis of artificial intelligence, machine learning and data science techniques, applied to computer security to assist readers in hardening their computer systems against threats. Emphasizing practical and actionable strategies that can be immediately implemented by industry professionals and computer device's owners, the author explains how to install and harden firewalls, intrusion detection systems, attack recognition tools, and malware protection systems. He also explains how to recognize and counter common hacking activities.

This book bridges the gap between cybersecurity education and new data science programs, discussing how cutting-edge artificial intelligence and machine learning techniques can work for and against cybersecurity eff

Table of Contents

Acknowledgments ix

Introduction xi

1 Computer Security with Artificial Intelligence, Machine Learning, and Data Science Combination: What? How? Why? And Why Now and Together? 1

1.1 The Current Security Landscape 1

1.2 Computer Security Basic Concepts 7

1.3 Sources of Security Threats 9

1.4 Attacks Against IoT and Wireless Sensor Networks 13

1.5 Introduction into Artificial Intelligence, Machine Learning, and Data Science 18

1.6 Fuzzy Logic and Systems 31

1.7 Machine Learning 35

1.8 Artificial Neural Networks (ANN) 43

1.9 Genetic Algorithms (GA) 50

1.10 Hybrid Intelligent Systems 51

Review Questions 52

Exercises 53

References 54

2 Firewall Design and Implementation: How to Configure Knowledge for the First Line of Defense? 57

2.1 Firewall Definition, History, and Functions: What Is It? And Where Does It Come From? 57

2.2 Firewall Operational Models or How Do They Work? 65

2.3 Basic Firewall Architectures or How Are They Built Up? 70

2.4 Process of Firewall Design, Implementation, and Maintenance or What Is the Right Way to Put All Things Together? 75

2.5 Firewall Policy Formalization with Rules or How Is the Knowledge Presented? 82

2.6 Firewalls Evaluation and Current Developments or How Are They Getting More and More Intelligent? 96

Review Questions 104

Exercises 106

References 107

3 Intrusion Detection Systems: What Do They Do Beyond the First Line of Defense? 109

3.1 Definition, Goals, and Primary Functions 109

3.2 IDS from a Historical Perspective 113

3.3 Typical IDS Architecture Topologies, Components, and Operational Ranges 116

3.4 IDS Types: Classification Approaches 121

3.5 IDS Performance Evaluation 131

3.6 Artificial Intelligence and Machine Learning Techniques in IDS Design 136

3.7 Intrusion Detection Challenges and Their Mitigation in IDS Design and Deployment 159

3.8 Intrusion Detection Tools 163

Review Questions 172

Exercises 174

References 175

4 Malware and Vulnerabilities Detection and Protection: What Are We Looking for and How? 177

4.1 Malware Definition, History, and Trends in Development 177

4.2 Malware Classification 182

4.3 Spam 214

4.4 Software Vulnerabilities 216

4.5 Principles of Malware Detection and Anti-malware Protection 219

4.6 Malware Detection Algorithms 229

4.7 Anti-malware Tools 237

Review Questions 240

Exercises 242

References 243

5 Hackers versus Normal Users: Who Is Our Enemy and How to Differentiate Them from Us? 247

5.1 Hacker’s Activities and Protection Against 247

5.2 Data Science Investigation of Ordinary Users’ Practice 273

5.3 User’s Authentication 288

5.4 User’s Anonymity, Attacks Against It, and Protection 301

Review Questions 309

Exercises 310

References 311

6 Adversarial Machine Learning: Who Is Machine Learning Working For? 315

6.1 Adversarial Machine Learning Definition 315

6.2 Adversarial Attack Taxonomy 316

6.3 Defense Strategies 320

6.4 Investigation of the Adversarial Attacks Influence on the Classifier Performance Use Case 322

6.5 Generative Adversarial Networks 327

Review Questions 333

Exercises 334

References 335

Index 337

Intelligent Security Systems

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    A Hardback by Leon Reznik

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      View other formats and editions of Intelligent Security Systems by Leon Reznik

      Publisher: John Wiley & Sons Inc
      Publication Date: 05/11/2021
      ISBN13: 9781119771531, 978-1119771531
      ISBN10: 1119771536

      Description

      Book Synopsis
      INTELLIGENT SECURITY SYSTEMS

      Dramatically improve your cybersecurity using AI and machine learning

      In Intelligent Security Systems, distinguished professor and computer scientist Dr. Leon Reznik delivers an expert synthesis of artificial intelligence, machine learning and data science techniques, applied to computer security to assist readers in hardening their computer systems against threats. Emphasizing practical and actionable strategies that can be immediately implemented by industry professionals and computer device's owners, the author explains how to install and harden firewalls, intrusion detection systems, attack recognition tools, and malware protection systems. He also explains how to recognize and counter common hacking activities.

      This book bridges the gap between cybersecurity education and new data science programs, discussing how cutting-edge artificial intelligence and machine learning techniques can work for and against cybersecurity eff

      Table of Contents

      Acknowledgments ix

      Introduction xi

      1 Computer Security with Artificial Intelligence, Machine Learning, and Data Science Combination: What? How? Why? And Why Now and Together? 1

      1.1 The Current Security Landscape 1

      1.2 Computer Security Basic Concepts 7

      1.3 Sources of Security Threats 9

      1.4 Attacks Against IoT and Wireless Sensor Networks 13

      1.5 Introduction into Artificial Intelligence, Machine Learning, and Data Science 18

      1.6 Fuzzy Logic and Systems 31

      1.7 Machine Learning 35

      1.8 Artificial Neural Networks (ANN) 43

      1.9 Genetic Algorithms (GA) 50

      1.10 Hybrid Intelligent Systems 51

      Review Questions 52

      Exercises 53

      References 54

      2 Firewall Design and Implementation: How to Configure Knowledge for the First Line of Defense? 57

      2.1 Firewall Definition, History, and Functions: What Is It? And Where Does It Come From? 57

      2.2 Firewall Operational Models or How Do They Work? 65

      2.3 Basic Firewall Architectures or How Are They Built Up? 70

      2.4 Process of Firewall Design, Implementation, and Maintenance or What Is the Right Way to Put All Things Together? 75

      2.5 Firewall Policy Formalization with Rules or How Is the Knowledge Presented? 82

      2.6 Firewalls Evaluation and Current Developments or How Are They Getting More and More Intelligent? 96

      Review Questions 104

      Exercises 106

      References 107

      3 Intrusion Detection Systems: What Do They Do Beyond the First Line of Defense? 109

      3.1 Definition, Goals, and Primary Functions 109

      3.2 IDS from a Historical Perspective 113

      3.3 Typical IDS Architecture Topologies, Components, and Operational Ranges 116

      3.4 IDS Types: Classification Approaches 121

      3.5 IDS Performance Evaluation 131

      3.6 Artificial Intelligence and Machine Learning Techniques in IDS Design 136

      3.7 Intrusion Detection Challenges and Their Mitigation in IDS Design and Deployment 159

      3.8 Intrusion Detection Tools 163

      Review Questions 172

      Exercises 174

      References 175

      4 Malware and Vulnerabilities Detection and Protection: What Are We Looking for and How? 177

      4.1 Malware Definition, History, and Trends in Development 177

      4.2 Malware Classification 182

      4.3 Spam 214

      4.4 Software Vulnerabilities 216

      4.5 Principles of Malware Detection and Anti-malware Protection 219

      4.6 Malware Detection Algorithms 229

      4.7 Anti-malware Tools 237

      Review Questions 240

      Exercises 242

      References 243

      5 Hackers versus Normal Users: Who Is Our Enemy and How to Differentiate Them from Us? 247

      5.1 Hacker’s Activities and Protection Against 247

      5.2 Data Science Investigation of Ordinary Users’ Practice 273

      5.3 User’s Authentication 288

      5.4 User’s Anonymity, Attacks Against It, and Protection 301

      Review Questions 309

      Exercises 310

      References 311

      6 Adversarial Machine Learning: Who Is Machine Learning Working For? 315

      6.1 Adversarial Machine Learning Definition 315

      6.2 Adversarial Attack Taxonomy 316

      6.3 Defense Strategies 320

      6.4 Investigation of the Adversarial Attacks Influence on the Classifier Performance Use Case 322

      6.5 Generative Adversarial Networks 327

      Review Questions 333

      Exercises 334

      References 335

      Index 337

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