Fuzziness in Information Systems

How to Deal with Crisp and Fuzzy Data in Selection, Classification, and Summarization

Nonfiction, Computers, Advanced Computing, Artificial Intelligence, Database Management, General Computing
Cover of the book Fuzziness in Information Systems by Miroslav Hudec, Springer International Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Miroslav Hudec ISBN: 9783319425184
Publisher: Springer International Publishing Publication: September 28, 2016
Imprint: Springer Language: English
Author: Miroslav Hudec
ISBN: 9783319425184
Publisher: Springer International Publishing
Publication: September 28, 2016
Imprint: Springer
Language: English

This book is an essential contribution to the description of fuzziness in information systems. Usually users want to retrieve data or summarized information from a database and are interested in classifying it or building rule-based systems on it. But they are often not aware of the nature of this data and/or are unable to determine clear search criteria. The book examines theoretical and practical approaches to fuzziness in information systems based on statistical data related to territorial units.

Chapter 1 discusses the theory of fuzzy sets and fuzzy logic to enable readers to understand the information presented in the book. Chapter 2 is devoted to flexible queries and includes issues like constructing fuzzy sets for query conditions, and aggregation operators for commutative and non-commutative conditions, while Chapter 3 focuses on linguistic summaries. Chapter 4 presents fuzzy logic control architecture adjusted specifically for the aims of business and governmental agencies, and shows fuzzy rules and procedures for solving inference tasks. Chapter 5 covers the fuzzification of classical relational databases with an emphasis on storing fuzzy data in classical relational databases in such a way that existing data and normal forms are not affected. This book also examines practical aspects of user-friendly interfaces for storing, updating, querying and summarizing. Lastly, Chapter 6 briefly discusses possible integration of fuzzy queries, summarization and inference related to crisp and fuzzy databases. 

The main target audience of the book is researchers and students working in the fields of data analysis, database design and business intelligence. As it does not go too deeply into the foundation and mathematical theory of fuzzy logic and relational algebra, it is also of interest to advanced professionals developing tailored applications based on fuzzy sets.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

This book is an essential contribution to the description of fuzziness in information systems. Usually users want to retrieve data or summarized information from a database and are interested in classifying it or building rule-based systems on it. But they are often not aware of the nature of this data and/or are unable to determine clear search criteria. The book examines theoretical and practical approaches to fuzziness in information systems based on statistical data related to territorial units.

Chapter 1 discusses the theory of fuzzy sets and fuzzy logic to enable readers to understand the information presented in the book. Chapter 2 is devoted to flexible queries and includes issues like constructing fuzzy sets for query conditions, and aggregation operators for commutative and non-commutative conditions, while Chapter 3 focuses on linguistic summaries. Chapter 4 presents fuzzy logic control architecture adjusted specifically for the aims of business and governmental agencies, and shows fuzzy rules and procedures for solving inference tasks. Chapter 5 covers the fuzzification of classical relational databases with an emphasis on storing fuzzy data in classical relational databases in such a way that existing data and normal forms are not affected. This book also examines practical aspects of user-friendly interfaces for storing, updating, querying and summarizing. Lastly, Chapter 6 briefly discusses possible integration of fuzzy queries, summarization and inference related to crisp and fuzzy databases. 

The main target audience of the book is researchers and students working in the fields of data analysis, database design and business intelligence. As it does not go too deeply into the foundation and mathematical theory of fuzzy logic and relational algebra, it is also of interest to advanced professionals developing tailored applications based on fuzzy sets.

More books from Springer International Publishing

Cover of the book Handbook of Positive Psychology in Intellectual and Developmental Disabilities by Miroslav Hudec
Cover of the book Mechanisms, Transmissions and Applications by Miroslav Hudec
Cover of the book Peri-Urban Areas and Food-Energy-Water Nexus by Miroslav Hudec
Cover of the book The Hypothalamic-Pituitary-Adrenal Axis in Health and Disease by Miroslav Hudec
Cover of the book Control and Filtering for Semi-Markovian Jump Systems by Miroslav Hudec
Cover of the book Regional Research Frontiers - Vol. 1 by Miroslav Hudec
Cover of the book Natural Language Processing and Chinese Computing by Miroslav Hudec
Cover of the book Protection of Materials and Structures from the Space Environment by Miroslav Hudec
Cover of the book Essentials of Teaching and Integrating Visual and Media Literacy by Miroslav Hudec
Cover of the book Rodent Model as Tools in Ethical Biomedical Research by Miroslav Hudec
Cover of the book Cyberbullying Across the Globe by Miroslav Hudec
Cover of the book Policy-Making at the European Periphery by Miroslav Hudec
Cover of the book Ultrafast Dynamics of Phospholipid-Water Interfaces by Miroslav Hudec
Cover of the book War and Memory in Russia, Ukraine and Belarus by Miroslav Hudec
Cover of the book Modeling and Simulation of Functionalized Materials for Additive Manufacturing and 3D Printing: Continuous and Discrete Media by Miroslav Hudec
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy