Uses the "modified Moore method" approach in which examples and proof opportunities are worked into the text in order to encourage students to develop some of the content through their own examples and arguments while they are reading the text
Concentrates on the mathematics underlying the ideas of optimizing linear functions under linear constraints and the algorithms used to solve them
The material progresses at a gentle and inviting pace
Ample examples and exercises are included
This undergraduate textbook is written for a junior/senior level course on linear optimization. Unlike other texts, the treatment allows the use of the "modified Moore method" approach by working examples and proof opportunities into the text in order to encourage students to develop some of the content through their own experiments and arguments while reading the text. Additionally, the focus is on the mathematics underlying the ideas of optimizing linear functions under linear constraints and the algorithms used to solve them. In particular, the author uses the Simplex Algorithm to motivate these concepts. The text progresses at a gentle and inviting pace. The presentation is driven by numerous examples and illustrations. Ample exercises are provided at the end of each chapter for mastering the material. Opportunities for integrating Maple (or similar) software are included in the book. The author’s own WebSim software can be freely downloaded from his website for pedagogical use.
The teacher's version of the text contains solutions embedded within the text, rather than in an appendix. It also has extra material and suggestions for the teacher’s benefit. Junior/senior level undergraduate students will benefit from the book, as will beginning graduate students. Future secondary school mathematics teachers will also find this book useful.
Arizona State University Professor Glenn H. Hurlbert has published nearly 50 articles in graph theory, combinatorics, and optimization, and has been the recipient of numerous teaching and mentoring awards from ASU, the ASU Parents Association, the School of Mathematical and Statistical Sciences, and the Mathematical Association of America.
Content Level » Graduate
Keywords » Convex Geometry - Convexity - Duality - Linear Programming - Networks - Simplex Algorithm - integer optimization - linear optimization - matrix games - modified Moore method
發表於2024-11-24
Linear Optimization 2024 pdf epub mobi 電子書 下載
圖書標籤: 計算機科學 美國 數學 數學 Workbook UTM The Springer
Linear Optimization 2024 pdf epub mobi 電子書 下載