جزئیات کتاب
فرمت
جلد سخت
صفحات
322
زبان
انگلیسی
منتشر شده
Apr 28, 2015
ناشر
Cambridge University Press
ISBN-10
1107065178
ISBN-13
9781107065178
توضیحات
High-dimensional data presents unique challenges and opportunities across various fields, highlighting the necessity for advanced analytical techniques. This book delves into the intricacies of large sample covariance matrices, providing a deep understanding crucial for researchers and practitioners dealing with vast datasets. The authors, with their expertise, explore the theoretical underpinnings and practical applications of these matrices in high-dimensional settings.
Readers are introduced to essential concepts and methods that have become foundational in the study of multivariate statistics, particularly when dimensions outstrip sample sizes. The text offers insights into estimation, inference, and the interpretation of results, making it an invaluable resource for those navigating the complexities of high-dimensional data analysis.
Moreover, the book addresses common pitfalls and assumptions, equipping readers with the knowledge to undertake rigorous analyses in their respective fields. With its comprehensive approach, this work serves as a critical reference for advanced students, researchers, and professionals aiming to harness the power of high-dimensional data effectively.
Readers are introduced to essential concepts and methods that have become foundational in the study of multivariate statistics, particularly when dimensions outstrip sample sizes. The text offers insights into estimation, inference, and the interpretation of results, making it an invaluable resource for those navigating the complexities of high-dimensional data analysis.
Moreover, the book addresses common pitfalls and assumptions, equipping readers with the knowledge to undertake rigorous analyses in their respective fields. With its comprehensive approach, this work serves as a critical reference for advanced students, researchers, and professionals aiming to harness the power of high-dimensional data effectively.