Risk Analysis in Stochastic Supply Chains Risk Analysis in Stochastic Supply Chains
International Series in Operations Research & Management Science

Risk Analysis in Stochastic Supply Chains

A Mean-Risk Approach

    • €87.99
    • €87.99

Publisher Description

Risk analysis is crucial in stochastic supply chain models. Over the past few years, the pace has quickened for  research attempting to explore risk analysis issues in supply chain management problems, while the majority of recent papers focus on conceptual framework or computational numerical analysis.  Pioneered by Nobel laureate Markowitz in the 1950s, the mean-risk (MR) formulation became a fundamental theory for risk management in finance. Despite the significance and popularity of MR-related approaches in finance, their applications in studying multi-echelon supply chain management problems have only been seriously explored in recent years.

While the MR approach has already been shown to be useful in conducting risk analysis in stochastic supply chain models, there is no comprehensive reference source that provides the state-of-the-art findings on this important model for supply chain management. Thus it is significant to have a book that reviews and extends the MR related works for supply chain risk analysis. 

This book is organized into five chapters. Chapter 1 introduces the topic, offers a timely review of various related areas, and explains why the MR approach is important for conducting supply chain risk analysis. Chapter 2 examines the single period inventory model with the mean-variance and mean-semi-deviation approaches. Extensive discussions on the efficient frontiers are also reported. Chapter 3 explores the infinite horizon multi-period inventory model with a mean-variance approach. Chapter 4 investigates the supply chain coordination problem with a versatile target sales rebate contract and a risk averse retailer possessing the mean-variance optimization objective. Chapter 5 concludes the book and discusses various promising future research directions and extensions. Every chapter can be taken as a self-contained article, and the notation within each chapter is consistently employed.

GENRE
Business & Personal Finance
RELEASED
2012
5 June
LANGUAGE
EN
English
LENGTH
108
Pages
PUBLISHER
Springer New York
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
1.9
MB
Supply Chain Coordination under Uncertainty Supply Chain Coordination under Uncertainty
2011
Supply Chain Optimization Supply Chain Optimization
2006
Handbook of Information Exchange in Supply Chain Management Handbook of Information Exchange in Supply Chain Management
2016
Commodity Procurement with Operational and Financial Instruments Commodity Procurement with Operational and Financial Instruments
2010
Retail Analytics Retail Analytics
2014
Supply Chain Management: Models, Applications, and Research Directions Supply Chain Management: Models, Applications, and Research Directions
2006
Optimization and Control for Systems in the Big-Data Era Optimization and Control for Systems in the Big-Data Era
2017
Luxury Fashion Retail Management Luxury Fashion Retail Management
2016
Analytical Modeling Research in Fashion Business Analytical Modeling Research in Fashion Business
2016
Sustainable Fashion Supply Chain Management Sustainable Fashion Supply Chain Management
2015
Fashion Branding and Consumer Behaviors Fashion Branding and Consumer Behaviors
2014
Intelligent Fashion Forecasting Systems: Models and Applications Intelligent Fashion Forecasting Systems: Models and Applications
2013
Outsourcing Using Operations Research and Management Science Methods Outsourcing Using Operations Research and Management Science Methods
2025
Outsourcing Outsourcing
2025
Machine Learning Technologies on Energy Economics and Finance Machine Learning Technologies on Energy Economics and Finance
2025
Machine Learning Technologies on Energy Economics and Finance Machine Learning Technologies on Energy Economics and Finance
2025
University-Industry Collaboration University-Industry Collaboration
2025
The Unaffordable Price of Static Decision-making Models The Unaffordable Price of Static Decision-making Models
2025