Arc-Search Techniques for Interior-Point Methods
暫譯: 內點法的弧搜尋技術
Yang, Yaguang
- 出版商: CRC
- 出版日期: 2020-11-27
- 售價: $6,190
- 貴賓價: 9.5 折 $5,881
- 語言: 英文
- 頁數: 306
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 0367487284
- ISBN-13: 9780367487287
海外代購書籍(需單獨結帳)
商品描述
This book discusses an important area of numerical optimization, called interior-point method. This topic has been popular since the 1980s when people gradually realized that all simplex algorithms were not convergent in polynomial time and many interior-point algorithms could be proved to converge in polynomial time. However, for a long time, there was a noticeable gap between theoretical polynomial bounds of the interior-point algorithms and efficiency of these algorithms. Strategies that were important to the computational efficiency became barriers in the proof of good polynomial bounds. The more the strategies were used in algorithms, the worse the polynomial bounds became. To further exacerbate the problem, Mehrotra's predictor-corrector (MPC) algorithm (the most popular and efficient interior-point algorithm until recently) uses all good strategies and fails to prove the convergence. Therefore, MPC does not have polynomiality, a critical issue with the simplex method.
This book discusses recent developments that resolves the dilemma. It has three major parts. The first, including Chapters 1, 2, 3, and 4, presents some of the most important algorithms during the development of the interior-point method around the 1990s, most of them are widely known. The main purpose of this part is to explain the dilemma described above by analyzing these algorithms' polynomial bounds and summarizing the computational experience associated with them. The second part, including Chapters 5, 6, 7, and 8, describes how to solve the dilemma step-by-step using arc-search techniques. At the end of this part, a very efficient algorithm with the lowest polynomial bound is presented. The last part, including Chapters 9, 10, 11, and 12, extends arc-search techniques to some more general problems, such as convex quadratic programming, linear complementarity problem, and semi-definite programming.
商品描述(中文翻譯)
這本書討論了一個重要的數值優化領域,稱為內點法(interior-point method)。自1980年代以來,這個主題變得非常受歡迎,因為人們逐漸意識到所有的單純形算法(simplex algorithms)在多項式時間內並不收斂,而許多內點算法則可以證明在多項式時間內收斂。然而,長期以來,內點算法的理論多項式界限與這些算法的效率之間存在明顯的差距。對計算效率至關重要的策略成為了證明良好多項式界限的障礙。這些策略在算法中使用得越多,多項式界限就變得越差。更糟糕的是,Mehrotra的預測-修正(MPC)算法(直到最近最受歡迎和高效的內點算法)使用了所有良好的策略,但未能證明收斂性。因此,MPC不具備多項式性,這是單純形法的一個關鍵問題。
這本書討論了解決這一困境的最新發展。它分為三個主要部分。第一部分,包括第1、2、3和4章,介紹了1990年代內點法發展過程中一些最重要的算法,其中大多數是廣為人知的。這部分的主要目的是通過分析這些算法的多項式界限並總結與之相關的計算經驗,來解釋上述困境。第二部分,包括第5、6、7和8章,描述了如何使用弧搜尋技術逐步解決這一困境。在這部分的結尾,提出了一個具有最低多項式界限的非常高效的算法。最後一部分,包括第9、10、11和12章,將弧搜尋技術擴展到一些更一般的問題,例如凸二次規劃(convex quadratic programming)、線性互補問題(linear complementarity problem)和半正定規劃(semi-definite programming)。
作者簡介
Yaguang Yang received a BSc (1982) and a MSc (1985) from Huazhong University of Science and Technology, China. From 1985 to 1990, he was a lecturer at Zhejiang University in China. In 1996, he received his PhD from the Department of Electrical and Computer Engineering at the University of Maryland, College Park. He proposed and developed arc-search techniques for interior-point methods. He is currently with the US Nuclear Regulatory Commission.
作者簡介(中文翻譯)
Yaguang Yang於1982年獲得中國華中科技大學的學士學位,並於1985年獲得碩士學位。從1985年到1990年,他在中國浙江大學擔任講師。1996年,他在馬里蘭大學(University of Maryland, College Park)的電機與計算機工程系獲得博士學位。他提出並開發了內點法的弧搜尋技術。目前,他在美國核能管理委員會工作。