Rough Set Theory: A True Landmark in Data Analysis by Ajith Abraham
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 42095
Rs.730.00
Rs.1,090.00
Tags: best books , Best Price , Best Selling Books , classification algorithms , computational intelligence , data analysis techniques , data classification , data-driven approaches , data-driven decision making , feature extraction , feature selection , fuzzy logic , information theory , intelligent systems , knowledge discovery , knowledge representation , knowledge-based systems , ONLINE BOOKS , Online Bookshop , pattern recognition , rough set algorithms , rough set methods , Rough Set Theory , rough sets , uncertainty modeling
Rough Set Theory: A True Landmark in Data Analysis
Author: Ajith Abraham
Binding: Paperback / Hardcover (varies by edition)
Paper Quality:white paper
Category: Computer Science, Data Mining, Artificial Intelligence
Recommended For:
BS/MS Computer Science, Data Science, AI, and Information Technology students, researchers in soft computing and machine learning, and professionals dealing with uncertain and imprecise data.
Key Points:
-
Fundamentals of Rough Set Theory: The book provides a clear introduction to the core concepts of rough set theory, including its mathematical foundations and relationship to other computational methods.
-
Interdisciplinary Applications: The editors showcase how rough set theory has been successfully applied in diverse fields, such as data mining, machine learning, artificial intelligence, and decision support systems.
-
Data Preprocessing and Classification: It explores how rough sets can be used for preprocessing and feature selection, as well as classification problems, which are common in data analysis and pattern recognition.
-
Dealing with Uncertainty and Incompleteness: Rough set theory is particularly valuable for handling uncertainty and incomplete data, making it ideal for real-world scenarios where perfect data is unavailable.
-
Integration with Other Methods: The book discusses how rough set theory can be combined with other computational techniques, such as neural networks, fuzzy logic, and genetic algorithms, to enhance data analysis.
-
Practical Case Studies: Several practical examples and case studies are provided to demonstrate the application of rough set theory in solving real-world problems across various domains.
-
Advanced Topics and Extensions: For readers with a deeper interest in the field, the book covers advanced topics such as hybrid rough set models, dynamic rough sets, and their role in big data analytics.
-
The Role in Knowledge Discovery: The book emphasizes rough sets’ importance in knowledge discovery, particularly for extracting valuable insights from large and complex datasets.
-
Algorithmic Techniques: It includes a discussion of various algorithms developed using rough set theory for efficient data analysis and decision-making processes.
-
Future Directions: The editors conclude with a look at the future potential of rough set theory, exploring emerging trends and opportunities for its application in modern data science and analytics.
Conclusion:
Rough Set Theory: A True Landmark in Data Analysis serves as both an academic and practical guide to understanding the significance and versatility of rough set theory in data analysis. With contributions from leading experts, this book provides a thorough overview of both the theoretical underpinnings and the diverse applications of rough sets. It is an essential resource for researchers and practitioners working in fields that involve data analysis, machine learning, artificial intelligence, and decision support systems. The inclusion of case studies and practical insights makes it not only an informative text but also a valuable tool for solving complex real-world problems.
════ ⋆★⋆ ═══
Writer ✤
Ajith Abraham (Editor), Rafael Falcón (Editor), Rafael Bello (Editor)