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Data Science for Malware Analysis

You're reading from   Data Science for Malware Analysis A comprehensive guide to using AI in detection, analysis, and compliance

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Product type Paperback
Published in Dec 2023
Publisher Packt
ISBN-13 9781804618646
Length 230 pages
Edition 1st Edition
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Author (1):
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Shane Molinari Shane Molinari
Author Profile Icon Shane Molinari
Shane Molinari
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Toc

Table of Contents (15) Chapters Close

Preface 1. Part 1– Introduction
2. Chapter 1: Malware Science Life Cycle Overview FREE CHAPTER 3. Chapter 2: An Overview of the International History of Cyber Malware Impacts 4. Part 2 – The Current State of Key Malware Science AI Technologies
5. Chapter 3: Topological Data Analysis for Malware Detection and Analysis 6. Chapter 4: Artificial Intelligence for Malware Data Analysis and Detection 7. Chapter 5: Behavior-Based Malware Data Analysis and Detection 8. Part 3 – The Future State of AI’s Use for Malware Science
9. Chapter 6: The Future State of Malware Data Analysis and Detection 10. Chapter 7: The Future State of Key International Compliance Requirements 11. Chapter 8: Epilogue – A Harmonious Overture to the Future of Malware Science and Cybersecurity
12. Index 13. Other Books You May Enjoy Appendix

Using malware persistence diagrams to classify unknown software

Cybersecurity experts leverage a variety of approaches to detect and counter malware threats. One of these approaches is the use of signatures or known patterns of behavior that are indicative of a specific malware. However, modern malware employs sophisticated techniques to evade such signature-based detection methods. This is where TDA and its associated method of persistent homology can provide a significant edge.

To further expand on the example given: persistent homology creates a topological summary of high-dimensional data in the form of a persistence diagram. This diagram shows the “birth” and “death” of topological features, such as clusters and loops, as we vary the scale. By observing these diagrams, we can identify certain recurring patterns or “persistent features” that are commonly seen in the persistence diagrams of known malware.

Take, for instance, a certain...

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