Non-convex Optimization for Machine Learning (Foundations and Trends(r) in Machine Learning)
暫譯: 機器學習中的非凸優化(機器學習的基礎與趨勢)

Prateek Jain, Purushottam Kar

  • 出版商: Now Publishers Inc
  • 出版日期: 2017-12-04
  • 售價: $3,620
  • 貴賓價: 9.5$3,439
  • 語言: 英文
  • 頁數: 218
  • 裝訂: Paperback
  • ISBN: 1680833685
  • ISBN-13: 9781680833683
  • 相關分類: Machine Learning
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Non-convex Optimization for Machine Learning takes an in-depth look at the basics of non-convex optimization with applications to machine learning. It introduces the rich literature in this area, as well as equipping the reader with the tools and techniques needed to analyze these simple procedures for non-convex problems.

Non-convex Optimization for Machine Learning is as self-contained as possible while not losing focus of the main topic of non-convex optimization techniques. Entire chapters are devoted to present a tutorial-like treatment of basic concepts in convex analysis and optimization, as well as their non-convex counterparts. As such, this monograph can be used for a semester-length course on the basics of non-convex optimization with applications to machine learning. On the other hand, it is also possible to cherry pick individual portions, such the chapter on sparse recovery, or the EM algorithm, for inclusion in a broader course. Several courses such as those in machine learning, optimization, and signal processing may benefit from the inclusion of such topics.

Non-convex Optimization for Machine Learning concludes with a look at four interesting applications in the areas of machine learning and signal processing and explores how the non-convex optimization techniques introduced earlier can be used to solve these problems.

商品描述(中文翻譯)

《非凸優化在機器學習中的應用》深入探討了非凸優化的基本概念及其在機器學習中的應用。它介紹了該領域豐富的文獻,並為讀者提供了分析這些非凸問題簡單程序所需的工具和技術。

《非凸優化在機器學習中的應用》力求自成體系,同時不偏離非凸優化技術的主題。整個章節專門用於以教學式的方式介紹凸分析和優化的基本概念,以及其非凸對應概念。因此,這本專著可以用作一學期的非凸優化基礎課程,並應用於機器學習。另一方面,也可以選擇性地挑選個別部分,例如有關稀疏恢復或EM算法的章節,納入更廣泛的課程中。許多課程,如機器學習、優化和信號處理,可能會從這些主題的納入中受益。

《非凸優化在機器學習中的應用》最後探討了四個在機器學習和信號處理領域中的有趣應用,並探討了之前介紹的非凸優化技術如何用於解決這些問題。