Optimization for Data Analysis

Wright, Stephen J., Recht, Benjamin

  • 出版商: Cambridge
  • 出版日期: 2022-04-28
  • 售價: $1,900
  • 貴賓價: 9.5$1,805
  • 語言: 英文
  • 頁數: 300
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 1316518981
  • ISBN-13: 9781316518984
  • 相關分類: Data Science
  • 立即出貨 (庫存=1)

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商品描述

Optimization techniques are at the core of data science, including data analysis and machine learning. An understanding of basic optimization techniques and their fundamental properties provides important grounding for students, researchers, and practitioners in these areas. This text covers the fundamentals of optimization algorithms in a compact, self-contained way, focusing on the techniques most relevant to data science. An introductory chapter demonstrates that many standard problems in data science can be formulated as optimization problems. Next, many fundamental methods in optimization are described and analyzed, including: gradient and accelerated gradient methods for unconstrained optimization of smooth (especially convex) functions; the stochastic gradient method, a workhorse algorithm in machine learning; the coordinate descent approach; several key algorithms for constrained optimization problems; algorithms for minimizing nonsmooth functions arising in data science; foundations of the analysis of nonsmooth functions and optimization duality; and the back-propagation approach, relevant to neural networks.

商品描述(中文翻譯)

優化技術是數據科學的核心,包括數據分析和機器學習。對基本優化技術及其基本特性的理解,對於這些領域的學生、研究人員和從業人員來說,提供了重要的基礎。本書以緊湊、自成一體的方式介紹了優化算法的基礎知識,重點關注與數據科學最相關的技術。引言章節展示了許多標準的數據科學問題可以被形式化為優化問題。接下來,描述和分析了許多優化的基本方法,包括:用於無約束優化平滑(尤其是凸)函數的梯度和加速梯度方法;隨機梯度法,是機器學習中的一個重要算法;坐標下降法;幾個關鍵的約束優化問題算法;用於數據科學中出現的非光滑函數最小化的算法;非光滑函數和優化對偶性分析的基礎;以及與神經網絡相關的反向傳播方法。