Experimental Design for Data Science and Engineering
暫譯: 數據科學與工程的實驗設計

Joseph, V. Roshan

  • 出版商: CRC
  • 出版日期: 2026-03-10
  • 售價: $4,250
  • 貴賓價: 9.5$4,037
  • 語言: 英文
  • 頁數: 234
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 1041117523
  • ISBN-13: 9781041117520
  • 相關分類: Data-mining
  • 海外代購書籍(需單獨結帳)

商品描述

Theory, experiments, computation, and data are considered as the four pillars of science and engineering. Experimental Design for Data Science and Engineering describes efficient statistical methods for making the experiments cheaper and computations faster for extracting valuable information from data and help identify discrepancies in the theory. The book also includes recent advances in experimental designs for dealing with large amounts of observational data.

Traditionally the design and analysis of physical and computer experiments are treated differently, but this book attempts to create a unified framework using Gaussian process models. Although optimal designs are formulated using Gaussian process models, the focus is on obtaining practical experimental designs that are robust to model assumptions. A wide variety of topics are covered in the book -- from designs for interpolating or integrating simple functions to designs that are useful for optimizing and calibrating complex computer models. It draws techniques that are spread across the fields of statistics, applied mathematics, operations research, uncertainty quantification, and information theory, and build experimental design as a fundamental data analytic tool for engineering and scientific discoveries.

  • Designs for both computer and physical experiments are discussed in a unified framework.
  • Tries to integrate several concepts from numerical analysis, Monte Carlo methods, sensitivity analysis, optimization, and machine learning with experimental design techniques in statistics.
  • Methods are explained using many real experiments from physical sciences and engineering.
  • Experimental design techniques for analysis and compression of big data are discussed.
  • All the numerical illustrations in the book are reproducible using R and Python codes provided in the author's GitHub site.

商品描述(中文翻譯)

理論、實驗、計算和數據被視為科學和工程的四大支柱。《數據科學與工程的實驗設計》描述了高效的統計方法,以降低實驗成本並加快計算速度,從數據中提取有價值的信息,並幫助識別理論中的不一致之處。該書還包括了針對處理大量觀察數據的實驗設計的最新進展。

傳統上,物理和計算實驗的設計與分析被視為不同的領域,但本書試圖使用高斯過程模型創建一個統一的框架。雖然最佳設計是使用高斯過程模型來制定的,但重點在於獲得對模型假設具有穩健性的實用實驗設計。書中涵蓋了各種主題——從插值或積分簡單函數的設計到對優化和校準複雜計算模型有用的設計。它借鑒了統計學、應用數學、運籌學、不確定性量化和信息理論等領域的技術,並將實驗設計建立為工程和科學發現的基本數據分析工具。

- 討論了計算和物理實驗的設計,並在統一的框架中進行。
- 嘗試將數值分析、蒙特卡羅方法、靈敏度分析、優化和機器學習等幾個概念與統計中的實驗設計技術整合。
- 使用來自物理科學和工程的多個實際實驗來解釋方法。
- 討論了用於大數據分析和壓縮的實驗設計技術。
- 書中的所有數值示例均可使用作者的 GitHub 網站提供的 R 和 Python 代碼重現。

作者簡介

V. Roshan Joseph is A. Russell Chandler III Chair and Professor in the Stewart School of Industrial and Systems Engineering at Georgia Tech. He is an author of more than 100 journal articles and has received many research awards. He is a Fellow of the American Statistical Association and the American Society for Quality, and a former editor of Technometrics.

作者簡介(中文翻譯)

V. Roshan Joseph 是喬治亞理工學院斯圖爾特工業與系統工程學院的 A. Russell Chandler III 教授。他是超過 100 篇期刊文章的作者,並獲得多項研究獎項。他是美國統計協會和美國品質協會的會士,並曾擔任 Technometrics 的編輯。