Free Download Secure social network: Design & analysis with machine learning (Artificial Intelligence & Machine Learning) by Anshuman Mishra
English | November 7, 2025 | ISBN: N/A | ASIN: B0G1CMR86T | 280 pages | EPUB | 0.32 Mb
In an age where online interactions dominate our daily lives, social networks have transformed from being a means of staying in touch with friends to becoming one of the most powerful ecosystems for communication, business, learning, and influence. While these platforms have empowered billions of people worldwide, they have also opened the doors to new threats-privacy breaches, fake news propagation, identity theft, cyberbullying, and large-scale data exploitation. To build the next generation of safer, smarter, and more ethical social platforms, students and researchers need a deep understanding of both social network design principles and the security mechanisms powered by machine learning.
This book, "Secure Social Networks: Design & Analysis with Machine Learning - A Complete Student Guide," is a comprehensive attempt to address that need. It not only focuses on the theoretical foundations of social network security but also takes a practical approach, enabling students to design, analyze, and implement secure models using modern machine learning techniques.
The Preface is divided into four major sections to help readers set clear expectations before diving into the book
1. Purpose of the Book
The primary purpose of this book is to serve as a complete learning resource for students, researchers, and professionals who wish to understand how to design secure social networks and apply machine learning to improve their security mechanisms. The world has already seen several catastrophic data breaches-from Facebook-Cambridge Analytica's misuse of personal data to Twitter's mass account hacks-leading to mistrust in online platforms. These incidents highlight the urgent need for better-designed, privacy-preserving, and threat-resistant social networks.
This book aims to address this need by combining three crucial domains:Social Network Design Principles:
Readers will learn the architecture of social networks, how users interact in a graph structure, and what components are necessary to build scalable and efficient platforms.Cybersecurity for Social Networks:
Security concepts like authentication, encryption, access control, intrusion detection, and threat modeling are covered in depth with a special focus on their relevance to social networking systems.Machine Learning Applications:
Practical, hands-on coverage of ML algorithms used to detect spam, fake accounts, misinformation, malicious bots, and abnormal user behavior. Readers will also learn privacy-preserving techniques like federated learning and differential privacy, which are critical for building trustworthy systems.The book is structured to gradually take students from basic concepts to advanced design and implementation strategies. By the end of this book, readers will not only have theoretical knowledge but also practical skills to create a secure social network prototype, train ML models for threat detection, and analyze performance results scientifically.
Another major purpose is to bridge the gap between academic learning and industry applications. Many students learn about networks, security, and machine learning separately, but few resources combine them in a unified, problem-solving approach. This book fills that gap by presenting case studies from real-world platforms like Facebook, LinkedIn, Instagram, and Twitter, demonstrating how ML has been applied to tackle cyber threats.
2. Target Audience
This book is written with a student-first approach, but its scope also makes it highly valuable for a variety of readers. The following audiences will benefit the most:
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!