Uncertain Spatiotemporal Data Management for the Semantic Web

Uncertain Spatiotemporal Data Management for the Semantic Web

Release Date: March, 2024|Copyright: © 2024 |Pages: 518
DOI: 10.4018/978-1-6684-9108-9
ISBN13: 9781668491089|ISBN10: 1668491087|EISBN13: 9781668491096
Hardcover:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
Hardcover:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
E-Book:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Multi-user license (no added fee)
  • Immediate access after purchase
  • No DRM
  • PDF download
E-Book:
Available
$325.00
TOTAL SAVINGS: $325.00
Benefits
  • Immediate access after purchase
  • No DRM
  • PDF download
  • Receive a 10% Discount on eBooks
Hardcover +
E-Book:
Available
$390.00
TOTAL SAVINGS: $390.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
  • Multi-user license (no added fee)
  • Immediate access after purchase
  • No DRM
  • PDF download
Hardcover +
E-Book:
Available
$390.00
TOTAL SAVINGS: $390.00
Benefits
  • Printed-On-Demand (POD)
  • Usually ships one day from order
  • Immediate access after purchase
  • No DRM
  • PDF download
Article Processing Charge:
Available
$1,950.00
TOTAL SAVINGS: $1,950.00
OnDemand:
(Individual Chapters)
Available
$37.50
TOTAL SAVINGS: $37.50
Benefits
  • Purchase individual chapters from this book
  • Immediate PDF download after purchase or access through your personal library
Effective immediately, IGI Global has discontinued softcover book production. The softcover option is no longer available for direct purchase.
Description & Coverage
Description:

In the world of data management, one of the most formidable challenges faced by academic scholars is the effective handling of spatiotemporal data within the semantic web. As our world continues to change dynamically with time, nearly every aspect of our lives, from environmental monitoring to urban planning and beyond, is intrinsically linked to time and space. This synergy has given rise to an avalanche of spatiotemporal data, and the pressing question is how to manage, model, and query this voluminous information effectively. The existing approaches often fall short in addressing the intricacies and uncertainties that come with spatiotemporal data, leaving scholars struggling to unlock its full potential.

Uncertain Spatiotemporal Data Management for the Semantic Web is the definitive solution to the challenges faced by academic scholars in the realm of spatiotemporal data. This book offers a visionary approach to an all-encompassing guide in modeling and querying spatiotemporal data using innovative technologies like XML and RDF. Through a meticulously crafted set of chapters, this book sheds light on the nuances of spatiotemporal data and also provides practical solutions that empower scholars to navigate the complexities of this domain effectively.

This book caters specifically to the academic community, offering in-depth insights, innovative frameworks, and real-world applications that unlock the true potential of spatiotemporal data. With a comprehensive range of topics, from modeling to prediction and query optimization, this book equips scholars with the knowledge and tools they need to pioneer advancements in their field. Seasoned researchers and budding academics alike will find guidance within the pages of Uncertain Spatiotemporal Data Management for the Semantic Web along a transformative journey towards harnessing the power of spatiotemporal data in the semantic web, shaping the future of data management.

Coverage:

The many academic areas covered in this publication include, but are not limited to:

  • Data Handling
  • Data Management
  • Environmental Monitoring
  • Innovative Technologies
  • Query Optimization
  • RDF Modeling
  • Real-world Applications
  • Semantic Web
  • Spatiotemporal Data
  • Uncertainty Management
  • Urban Planning
  • Voluminous Information
  • XML Integration
Table of Contents
Search this Book:
Reset
Editor/Author Biographies
Luyi Bai received his PhD degree from Northeastern University, China. He is an academic visiting scholar at University of Leicester, UK. His current research interests include knowledge graph, spatiotemporal data management, uncertain databases, and fuzzy databases, etc. He has published over 40 papers in several Journals such as ACM Transactions on Knowledge Discovery from Data, World Wide Web Journal, Information Sciences, Knowledge-Based Systems, Neural Networks, and Expert Systems with Applications, etc. He has also published over 20 papers in several Conferences such as WWW, DASFAA, and KSEM, etc. He has authored one monograph published by Springer. He is a member of IEEE, ACM, CCF, and CAAI.

Lin Zhu, received her PhD degree from Liaoning Technical University, China. Her current research interests include knowledge graph and spatiotemporal database. She has published over 20 papers in several journals such as Expert Systems with Applications, Applied Soft Computing, and Applied Intelligence, etc. She is also a member of CAAI.

Archiving
All of IGI Global's content is archived via the CLOCKSS and LOCKSS initiative. Additionally, all IGI Global published content is available in IGI Global's InfoSci® platform.