Robustness analysis in decision aiding, optimization, and analytics
Series: International series in operations research & management sciencePublication details: Springer Switzerland 2016Description: xxi, 321 pISBN:- 9783319814322
- 519.6 DOU
Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | |
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Book | Indian Institute of Management LRC General Stacks | IT & Decisions Sciences | 519.6 DOU (Browse shelf(Opens below)) | 1 | Available | 000778 |
Browsing Indian Institute of Management LRC shelves, Shelving location: General Stacks, Collection: IT & Decisions Sciences Close shelf browser (Hides shelf browser)
519.542 KAS Machine learning for decision makers: | 519.542 PET An introduction to decision theory | 519.542 SCU Bayesian networks with examples in R | 519.6 DOU Robustness analysis in decision aiding, optimization, and analytics | 610.285 RAI AI and blockchain in healthcare | 610.727 HAR Doing meta-analysis with R: | 612.820285 ZHA Deep learning for EEG-based brain-computer interfaces: |
This book provides a broad coverage of the recent advances in robustness analysis in decision aiding, optimization, and analytics. It offers a comprehensive illustration of the challenges that robustness raises in different operations research and management science (OR/MS) contexts and the methodologies proposed from multiple perspectives. Aside from covering recent methodological developments, this volume also features applications of robust techniques in engineering and management, thus illustrating the robustness issues raised in real-world problems and their resolution within advances in OR/MS methodologies.
Robustness analysis seeks to address issues by promoting solutions, which are acceptable under a wide set of hypotheses, assumptions and estimates. In OR/MS, robustness has been mostly viewed in the context of optimization under uncertainty. Several scholars, however, have emphasized the multiple facets of robustness analysis in a broader OR/MS perspective that goes beyond the traditional framework, seeking to cover the decision support nature of OR/MS methodologies as well. As new challenges emerge in a “big-data'” era, where the information volume, speed of flow, and complexity increase rapidly, and analytics play a fundamental role for strategic and operational decision-making at a global level, robustness issues such as the ones covered in this book become more relevant than ever for providing sound decision support through more powerful analytic tools
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