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Graph Data Mining : Algorithm, Security and Application / edited by Qi Xuan, Zhongyuan Ruan, Yong Min.

SpringerLink Books Computer Science (2011-2024) Available online

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Format:
Book
Contributor:
Xuan, Qi, Editor.
Ruan, Zhongyuan., Editor.
Min, Yong, Editor.
SpringerLink (Online service)
Series:
Computer Science (SpringerNature-11645)
Big Data Management, 2522-0187
Language:
English
Subjects (All):
Data mining.
Machine learning.
Artificial intelligence-Data processing.
Data protection-Law and legislation.
Data Mining and Knowledge Discovery.
Machine Learning.
Data Science.
Privacy.
Local Subjects:
Data Mining and Knowledge Discovery.
Machine Learning.
Data Science.
Privacy.
Physical Description:
1 online resource (XVI, 243 pages) : 92 illustrations, 67 illustrations in color.
Edition:
1st ed. 2021.
Contained In:
Springer Nature eBook
Place of Publication:
Singapore : Springer Nature Singapore : Imprint: Springer, 2021.
System Details:
text file PDF
Summary:
Graph data is powerful, thanks to its ability to model arbitrary relationship between objects and is encountered in a range of real-world applications in fields such as bioinformatics, traffic network, scientific collaboration, world wide web and social networks. Graph data mining is used to discover useful information and knowledge from graph data. The complications of nodes, links and the semi-structure form present challenges in terms of the computation tasks, e.g., node classification, link prediction, and graph classification. In this context, various advanced techniques, including graph embedding and graph neural networks, have recently been proposed to improve the performance of graph data mining. This book provides a state-of-the-art review of graph data mining methods. It addresses a current hot topic - the security of graph data mining - and proposes a series of detection methods to identify adversarial samples in graph data. In addition, it introduces readers to graph augmentation and subgraph networks to further enhance the models, id est, improve their accuracy and robustness. Lastly, the book describes the applications of these advanced techniques in various scenarios, such as traffic networks, social and technical networks, and blockchains. .
Contents:
Chapter 1. Information Source Estimation with Multi-Channel Graph Neural Network
Chapter 2. Link Prediction based on Hyper-Substructure Network
Chapter 3. Broad Learning Based on Subgraph Networks for Graph Classification
Chapter 4. Subgraph Augmentation with Application to Graph Mining
5. Adversarial Attacks on Graphs: How to Hide Your Structural Information
Chapter 6. Adversarial Defenses on Graphs: Towards Increasing the Robustness of Algorithms
Chapter 7. Understanding Ethereum Transactions via Network Approach
Chapter 8. Find Your Meal Pal: A Case Study on Yelp Network
Chapter 9. Graph convolutional recurrent neural networks: a deep learning framework for traffic prediction
Chapter 10. Time Series Classification based on Complex Network
Chapter 11. Exploring the Controlled Experiment by Social Bots.
Other Format:
Printed edition:
ISBN:
978-981-16-2609-8
9789811626098
Access Restriction:
Restricted for use by site license.

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