1.

Record Nr.

UNINA9910983362703321

Autore

Wu Jiajing

Titolo

Blockchain Transaction Data Analytics : Complex Network Approaches / / edited by Jiajing Wu, Dan Lin, Zibin Zheng

Pubbl/distr/stampa

Singapore : , : Springer Nature Singapore : , : Imprint : Springer, , 2025

ISBN

981-9744-30-X

Edizione

[1st ed. 2025.]

Descrizione fisica

1 online resource (210 pages)

Collana

Big Data Management, , 2522-0187

Altri autori (Persone)

LinDan

ZhengZibin

Disciplina

005.7588

Soggetti

Blockchains (Databases)

Data mining

Software engineering

Computers and civilization

Electronic commerce

Blockchain

Data Mining and Knowledge Discovery

Software Engineering

Computers and Society

e-Commerce and e-Business

Lingua di pubblicazione

Inglese

Formato

Materiale a stampa

Livello bibliografico

Monografia

Nota di contenuto

Chapter 1. Overview: Blockchain data analytics from a network perspective -- Chapter 2. Dynamic and microscopic traits of typical accounts -- Chapter 3. Evolution of global driving factors in Ethereum transaction networks -- Chapter 4. Evolution and voting behaviors in the EOSIO networks -- Chapter 5.Account classification based on the homophily-heterophily graph neural networks -- Chapter 6. Phishing fraud detection based on the streaming graph algorithm -- Chapter 7. Account risk rating based on network propagation algorithm -- Chapter 8. Transaction tracking based on personalized PageRank algorithm.

Sommario/riassunto

Blockchain, a decentralized ledger technology based on cryptographic algorithms, ensures the creation of immutable and tamper-proof



ledgers in decentralized systems. The transparent nature of blockchain allows public access to transaction records, providing unprecedented opportunities for blockchain data analytics and mining. The primary value of blockchain transaction data analytics lies in two aspects: 1) by delving into the details of blockchain transaction data, we can extensively explore various types of user behavior patterns and the evolutionary process of blockchain transaction networks; and 2) analyzing blockchain transaction data aids in identifying illicit activities, offering effective regulatory solutions for the establishment of a healthier blockchain ecosystem. This book focuses on data analytics based on network-based approaches, providing a comprehensive analysis of blockchain data analytics problems, key technologies, and future directions. Different from most existing book, this book takes a unique approach to blockchain data analysis research, focusing on data analytics based on network-based approaches. Leveraging network analysis methods, the book concentrates on three main aspects of blockchain transaction data analytics and mining: (1) transaction network modelling and pattern mining, including macro and micro-level account attributes, money laundering network patterns, and network evolution patterns; (2) account business classification, such as account label prediction based on graph neural networks; and (3) anomaly behavior identification, covering phishing detection, risk scoring, and transaction tracking. Designed as a valuable resource for students, researchers, engineers, and policymakers in various fields related to blockchain data analytics, this book holds significant importance for understanding blockchain transaction behavior and addressing the detection of illicit activities in the blockchain space.