本の詳細
形式
キンドル
ページ数
446
言語
英語
公開されました
Nov 2, 2010
出版社
Springer
ISBN-10
1441977295
ISBN-13
9781441977298
説明
The revised edition of this influential work delves into the complexities of stochastic linear programming, offering a comprehensive overview that blends theory with practical computation techniques. Scholars and practitioners alike will find valuable insights as the authors meticulously explore various models, presenting both classical and contemporary approaches.
With an emphasis on real-world applications, the text provides clear explanations and examples that guide readers through the intricacies of stochastic optimization. Peter Kall and János Mayer draw upon their extensive expertise to elucidate challenging concepts, making them accessible for researchers and decision-makers in diverse fields.
In addition to theoretical advancements, the book addresses computational strategies, equipping readers with the tools needed to implement these models effectively. This edition is not just an academic resource; it is also an essential guide for those looking to tackle practical problems where uncertainty plays a critical role.
With an emphasis on real-world applications, the text provides clear explanations and examples that guide readers through the intricacies of stochastic optimization. Peter Kall and János Mayer draw upon their extensive expertise to elucidate challenging concepts, making them accessible for researchers and decision-makers in diverse fields.
In addition to theoretical advancements, the book addresses computational strategies, equipping readers with the tools needed to implement these models effectively. This edition is not just an academic resource; it is also an essential guide for those looking to tackle practical problems where uncertainty plays a critical role.