9781636390444-1636390447-Network Embedding: Theories, Methods, and Applications (Synthesis Lectures on Artificial Intelligence and Machine Learning, 48)

Network Embedding: Theories, Methods, and Applications (Synthesis Lectures on Artificial Intelligence and Machine Learning, 48)

ISBN-13: 9781636390444
ISBN-10: 1636390447
Author: Maosong Sun, Zhiyuan Liu, Chuan Shi, Cheng Yang, Cunchao Tu
Publication date: 2021
Publisher: Morgan & Claypool
Format: Paperback 220 pages
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Book details

ISBN-13: 9781636390444
ISBN-10: 1636390447
Author: Maosong Sun, Zhiyuan Liu, Chuan Shi, Cheng Yang, Cunchao Tu
Publication date: 2021
Publisher: Morgan & Claypool
Format: Paperback 220 pages

Summary

Network Embedding: Theories, Methods, and Applications (Synthesis Lectures on Artificial Intelligence and Machine Learning, 48) (ISBN-13: 9781636390444 and ISBN-10: 1636390447), written by authors Maosong Sun, Zhiyuan Liu, Chuan Shi, Cheng Yang, Cunchao Tu, was published by Morgan & Claypool in 2021. With an overall rating of 3.8 stars, it's a notable title among other AI & Machine Learning (Computer Science) books. You can easily purchase or rent Network Embedding: Theories, Methods, and Applications (Synthesis Lectures on Artificial Intelligence and Machine Learning, 48) (Paperback) from BooksRun, along with many other new and used AI & Machine Learning books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

This is a comprehensive introduction to the basic concepts, models, and applications of network representation learning (NRL) and the background and rise of network embeddings (NE).

It introduces the development of NE techniques by presenting several representative methods on general graphs, as well as a unified NE framework based on matrix factorization. Afterward, it presents the variants of NE with additional information: NE for graphs with node attributes/contents/labels; and the variants with different characteristics: NE for community-structured/large-scale/heterogeneous graphs. Further, the book introduces different applications of NE such as recommendation and information diffusion prediction. Finally, the book concludes the methods and applications and looks forward to the future directions.

Many machine learning algorithms require real-valued feature vectors of data instances as inputs. By projecting data into vector spaces, representation learning techniques have achieved promising performance in many areas such as computer vision and natural language processing. There is also a need to learn representations for discrete relational data, namely networks or graphs. Network Embedding (NE) aims at learning vector representations for each node or vertex in a network to encode the topologic structure. Due to its convincing performance and efficiency, NE has been widely applied in many network applications such as node classification and link prediction.

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