Hybrid Information Systems: Non-Linear Optimization strategie with Artificial Intelligence (De Gruyter Textbook)


Hybrid Information Systems: Non-Linear Optimization strategie with Artificial Intelligence (De Gruyter Textbook)

by: Ramakant Bhardwaj (Editor),Pushan Kumar Dutta (Editor),Pethuru Raj (Editor),Abhishek Kumar (Editor),Kavita Saini (Editor), Alfonso González Briones (Editor),Mohammed K.A. Kaabar (Editor)

Publisher: De Gruyter

Edition: 1st

Publication Date: 2024/8/5

Language: English

Print Length: 519 pages

ISBN-10: 3111329798

ISBN-13: 9783111329796

Book Description

The book provides comprehensive and cognitive approach to building and deploying sophisticated information systems. The book utilizes non-linear optimization techniques, fuzzy logic, and rough sets to model various real-world use cases for the digital era. The hybrid information system modeling handles both qualitative and quantitative data and can effectively handle uncertainty and imprecision in the data. The combination of non-linear optimization mechanisms, fuzzy logic, and rough sets provides a robust foundation for next-generation information systems that can fulfill the demands of adaptive, aware, and adroit software applications for the knowledge era. The book emphasizes the importance of the hybrid approach, which combines the strengths of both mathematical and AI techniques, to achieve a more comprehensive and effective modeling process. Hybrid information system modeling techniques combine different approaches, such as fuzzy logic, rough sets, and neural networks, to create models that can handle the complexity and uncertainty of real-world problems. These techniques provide a powerful tool for modeling and analyzing complex systems, and the applications of hybrid information system modeling demonstrate their potential for solving real-world problems in various fields.

About the Author

The book provides comprehensive and cognitive approach to building and deploying sophisticated information systems. The book utilizes non-linear optimization techniques, fuzzy logic, and rough sets to model various real-world use cases for the digital era. The hybrid information system modeling handles both qualitative and quantitative data and can effectively handle uncertainty and imprecision in the data. The combination of non-linear optimization mechanisms, fuzzy logic, and rough sets provides a robust foundation for next-generation information systems that can fulfill the demands of adaptive, aware, and adroit software applications for the knowledge era. The book emphasizes the importance of the hybrid approach, which combines the strengths of both mathematical and AI techniques, to achieve a more comprehensive and effective modeling process. Hybrid information system modeling techniques combine different approaches, such as fuzzy logic, rough sets, and neural networks, to create models that can handle the complexity and uncertainty of real-world problems. These techniques provide a powerful tool for modeling and analyzing complex systems, and the applications of hybrid information system modeling demonstrate their potential for solving real-world problems in various fields.

代发服务PDF电子书10立即求助
1111
打赏
未经允许不得转载:Wow! eBook » Hybrid Information Systems: Non-Linear Optimization strategie with Artificial Intelligence (De Gruyter Textbook)

觉得文章有用就打赏一下文章作者

支付宝扫一扫

微信扫一扫