Happy New Year! Get 10% off all books on our website throughout January! Discount will be applied automatically at checkout.

Knowledge Graph Reasoning

A Neuro-Symbolic Perspective

Yizhou Sun author Kewei Cheng author

Format:Hardback

Publisher:Springer International Publishing AG

Published:22nd Nov '24

Should be back in stock very soon

Knowledge Graph Reasoning cover

This book provides a coherent and unifying view for logic and representation learning to contribute to knowledge graph (KG) reasoning and produce better computational tools for integrating both worlds.  To this end, logic and deep neural network models are studied together as integrated models of computation.  This book is written for readers who are interested in KG reasoning and the new perspective of neuro-symbolic integration and have prior knowledge to neural networks and deep learning.  The authors first provide a preliminary introduction to logic and background knowledge closely related to the surveyed techniques such as the introduction of knowledge graph and ontological schema and the technical foundations of first-order logic learning.  Reasoning techniques for knowledge graph completion are presented from three perspectives, including: representation learning-based, logical, and neuro-symbolic integration.  The book then explores question answering on KGs with specific focus on multi-hop and complex-logic query answering before outlining work that addresses the rule learning problem.  The final chapters highlight foundations on ontological schema and introduce its usage in KG before closing with open research questions and a discussion on the potential directions in the future of the field.

ISBN: 9783031720079

Dimensions: unknown

Weight: unknown

196 pages

2024 ed.