Event Mining for Explanatory Modeling
- Event Mining Explanatory Modeling EventMiner System
- Categories:Computers & Internet
- Language:English(Translation Services Available)
- Publication Place:United States
- Publication date:May,2021
- Pages:160
- Retail Price:29.95 USD
- Size:(Unknown)
- Text Color:(Unknown)
- Words:(Unknown)
Request for Review Sample
Through our website, you are submitting the application for you to evaluate the book. If it is approved, you may read the electronic edition of this book online.
Special Note:
The submission of this request means you agree to inquire the books through RIGHTOL,
and undertakes, within 18 months, not to inquire the books through any other third party,
including but not limited to authors, publishers and other rights agencies.
Otherwise we have right to terminate your use of Rights Online and our cooperation,
as well as require a penalty of no less than 1000 US Dollars.
Feature
★ Co-authored by a senior scientist at Hitachi and a university endowed professor, the author team combines industrial practice experience with academic research backgrounds.
★ Features the EventMiner system and real - world case studies such as asthma risk management, enabling direct application of content to diverse scenarios.
Description
The book is intended as a primer on Event Mining for data-enthusiasts and information professionals interested in employing these event-based data analysis techniques in diverse applications. The reader is introduced to frameworks for temporal knowledge representation and reasoning, as well as temporal data mining and pattern discovery. Also discussed are the design principles of event mining systems. The approach is reified by the presentation of an event mining system called EventMiner, a computational framework for building explanatory models. The book contains case studies of using EventMiner in asthma risk management and an architecture for the objective self. The text can be used by researchers interested in harnessing the value of heterogeneous big data for designing explanatory event-based models in diverse application areas such as healthcare, biological data analytics, predictive maintenance of systems, computer networks, and business intelligence.
Author
Ramesh Jain is an entrepreneur, researcher, and educator. He is currently a Donald Bren Professor in Information & Computer Sciences at the University of California, Irvine (UCI). Earlier he worked at many other universities including University of Michigan, University of California at San Diego, and Georgia Tech. His research interests covered Control Systems (cybernetics), Computer Vision, Artificial Intelligence, and Multimedia Computing. His current research passion is in addressing health issues using cybernetic principles building on the progress in sensors, mobile, processing, artificial intelligence, computer vision, and storage technologies. He is founding director of the Institute for Future Health at UCI. He is a Fellow of the American Association for the Advancement of Science (AAAS), the Association for Computing Machinery (ACM), the Institute of Electrical and Electronics Engineers (IEEE), the Association for the Advancement of Artificial Intelligence (AAAI), the International Association for Pattern Recognition (IAPR), and the Society of Photo-Optical Instrumentation Engineers (SPIE, formerly the Society of Photographic Instrumentation Engineers).
Ramesh co-founded several companies, managed them in their initial stages, and then turned them over to professional management. He enjoys new challenges and likes to use technology to solve them. He is participating in addressing the biggest challenge for us all: how to enjoy a long life in good health.





