Covariance Analysis and Beyond
暫譯: 協方差分析及其延伸應用
Lan, Wei, Tsai, Chih-Ling
- 出版商: Springer
- 出版日期: 2026-04-17
- 售價: $6,600
- 貴賓價: 9.5 折 $6,270
- 語言: 英文
- 頁數: 251
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 3032087953
- ISBN-13: 9783032087959
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相關分類:
Data-mining
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商品描述
This book demonstrates the application of covariance matrices through cutting-edge models and practical applications, as well as extensions induced by multivariate data and other related subjects. In data analysis, when studying the relationships among a set of variables, the covariance matrix plays an important role. It has been commonly and widely used across many fields, including agriculture, biology, business, communications, economics, engineering, finance, marketing, mathematics, medicine, data science, and social science, regardless of whether the data is dense or sparse, low-dimension or high-dimension, time series or non-time series, structured or unstructured, fixed or random, and training (learning) data or testing data. The covariance matrix is fundamental for extracting valuable information from multivariate data, such that this classical tool can be influential in modern data science and innovative statistical models.
Specifically, this book utilizes the covariance matrix to comprehensively unify classical multivariate methods (e.g., principal components and factor analysis) and innovative models and algorithms (e.g., spatial autoregressive and network autocorrelation models, matrix factor models, tensor covariance models, deep learning, and transfer learning). In so doing, it surveys statistical and data science techniques for estimation, selection, prediction, inference, and decision making. As a result, the book provides a unique approach for readers to understand how the traditional and modern techniques in data analysis, such as multivariate analysis and machine learning, can be unified with different features but the same foundation, which is the covariance matrix. This book is suitable for graduate students and researchers across various quantitative disciplines.
商品描述(中文翻譯)
這本書展示了透過尖端模型和實際應用來應用協方差矩陣,以及由多變量數據和其他相關主題引發的擴展。在數據分析中,當研究一組變數之間的關係時,協方差矩陣扮演著重要的角色。它在許多領域中被廣泛使用,包括農業、生物學、商業、通訊、經濟學、工程、金融、市場行銷、數學、醫學、數據科學和社會科學,無論數據是稠密或稀疏、低維或高維、時間序列或非時間序列、結構化或非結構化、固定或隨機,以及訓練(學習)數據或測試數據。協方差矩陣對於從多變量數據中提取有價值的信息是基礎,因此這一經典工具在現代數據科學和創新統計模型中具有影響力。
具體而言,本書利用協方差矩陣全面統一經典的多變量方法(例如,主成分分析和因子分析)以及創新模型和算法(例如,空間自回歸和網絡自相關模型、矩陣因子模型、張量協方差模型、深度學習和遷移學習)。在這樣做的過程中,它調查了統計和數據科學技術在估計、選擇、預測、推斷和決策中的應用。因此,本書為讀者提供了一種獨特的方法,幫助他們理解傳統和現代數據分析技術(如多變量分析和機器學習)如何在不同特徵但相同基礎(即協方差矩陣)下統一。本書適合各種定量學科的研究生和研究人員。
作者簡介
作者簡介(中文翻譯)
魏蘭是西南財經大學統計與數據科學學院及統計研究中心的教授。他的研究興趣包括高維數據分析、社交網絡數據分析,以及統計在金融中的應用(例如,實證資產定價、風險管理和投資組合優化)。 蔡志玲是加州大學戴維斯分校的管理學榮譽特聘教授。他的研究興趣包括迴歸分析、模型選擇、高維數據、機器學習、時間序列、生物統計學,以及統計在商業中的應用。蔡博士是美國科學促進會和美國統計協會的會士,並且是國際統計學會的當選會員。他也是書籍《迴歸與時間序列模型選擇》(世界科學出版社,1998)的共同作者。