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商品描述
This book provides a concise account of four components of regression and smoothing methods: linear regression, generalized linear models, spline and kernel methods, and generalized linear mixed models. By bringing together parametric regression and nonparametric smoothing methods, the book emphasizes connections across methods, enabling readers to recognize common structures and to adapt techniques to new problems.
While standard texts often focus on the application of statistical methods from a user's perspective, this book covers the foregoing topics from a developer's perspective, with systematic attention to the mathematical, statistical, and computational ideas and results that underlie the methods. The distinction is analogous to that between a user's manual and a developer's manual for software: the goal is not only to demonstrate how to apply the methods, but also how they are derived and implemented.
Assuming a basic knowledge of undergraduate statistics, the book is intended primarily as a graduate textbook for the teaching and studying regression and smoothing methods. It serves as a useful resource for students and researchers in Statistics, Data Science, and related fields who wish to move beyond routine application and study modern regression and smoothing methods at a more advanced level.
Key Features:- Focuses on core and representative topics in regression and smoothing while addressing important methodological issues often omitted at the introductory level.
- Presents regression and smoothing methods in a coherent, interconnected manner that highlights their common structures and relationships.
- Explains and demonstrates numerical algorithms in a self-contained way, with R code that implements the methods directly rather than solely relying on existing packages.
- Reinforces learning through not only end-of-chapter exercises but also questions and exercises integrated into the main text.
商品描述(中文翻譯)
這本書簡明扼要地介紹了回歸與平滑方法的四個組成部分:線性回歸、廣義線性模型、樣條與核方法,以及廣義線性混合模型。通過將參數回歸和非參數平滑方法結合在一起,這本書強調了各種方法之間的聯繫,使讀者能夠識別共同結構並將技術應用於新問題。
雖然標準教材通常從使用者的角度專注於統計方法的應用,但這本書則從開發者的角度涵蓋上述主題,系統性地關注支撐這些方法的數學、統計和計算思想及結果。這種區別類似於軟體的使用手冊與開發手冊之間的差異:目標不僅是展示如何應用這些方法,還包括它們是如何推導和實現的。
假設讀者具備基本的本科統計知識,這本書主要作為研究生教材,用於教授和學習回歸與平滑方法。它對於希望超越常規應用,並在更高級別上研究現代回歸與平滑方法的統計學、數據科學及相關領域的學生和研究人員來說,是一個有用的資源。
**主要特點:**
- 專注於回歸與平滑的核心和代表性主題,同時解決在入門級別常被忽略的重要方法論問題。
- 以連貫且相互關聯的方式呈現回歸與平滑方法,突顯其共同結構和關係。
- 以自足的方式解釋和演示數值算法,提供直接實現這些方法的 R 代碼,而不僅僅依賴現有的套件。
- 通過不僅是章末練習,還有整合在主文本中的問題和練習來加強學習。
作者簡介
Zhiqiang Tan is a Distinguished Professor in the Department of Statistics, Rutgers University. His research and teaching interests include Monte Carlo methods, causal inference, statistical learning, and related areas. He is a Fellow of the American Statistical Association, a Fellow of the Institute of Mathematical Statistics, and an Elected Member of the International Statistical Institute.
作者簡介(中文翻譯)
譚志強是羅格斯大學統計系的特聘教授。他的研究和教學興趣包括蒙地卡羅方法、因果推斷、統計學習及相關領域。他是美國統計協會的會士、數學統計學會的會士,以及國際統計學會的當選會員。