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Essays on Supply Chain Management with Model Uncertainty

Essays on Supply Chain Management with Model Uncertainty PDF Author: Mengshi Lu
Publisher:
ISBN:
Category :
Languages : en
Pages : 97

Book Description
Traditional supply chain management models typically require complete model information, including structural relationships (e.g., how pricing decisions affect customer demand), probabilistic distributions, and parameters. However, in practice, the model information may be uncertain. My dissertation research seeks to address model uncertainty in supply chain management problems using data-driven and robust methods. Incomplete information typically comes in two forms, namely, historical data and partial information. When historical data are available, data-driven methods can be used to obtain decisions directly from data, instead of estimating the model information and then using these estimates to find the optimal solution. When partial information is available, robust methods consider all possible scenarios and make decisions to hedge against the worst-case scenario effectively, instead of making simplified assumptions that could lead to significant loss. Chapter 1 provides an overview of model uncertainty in supply chain management, and discusses the limitations of the traditional methods. The main part of the dissertation is on the application of data-driven and robust methods to three widely-studied supply chain management problems with model uncertainty. Chapter 2 studies the reliable facility location problem where the joint-distribution of facility disruptions is uncertain. For this problem, usually, only partial information in the form of marginal facility disruption probabilities is available. Most existing models require the assumption that the disruptions at different locations are independent of each other. However, in practice, correlated disruptions are widely observed. We present a model that allows disruptions to be correlated with an uncertain joint distribution, and apply distributionally-robust optimization to minimize the expected cost under the worst-case distribution with the given marginal disruption probabilities. The worst-case distribution has a practical interpretation, and its sparse structure allows us to solve the problem efficiently. We find that ignoring disruption correlation could lead to significant loss. The robust method can significantly reduce the regret from model misspecification. It outperforms the traditional approach even under very mild correlation. Most of the benefit of the robust model can be captured at a relatively small cost, which makes it easy to implement in practice. Chapter 3 studies the pricing newsvendor problem where the structural relationship between pricing decisions and customer demand is unknown. Traditional methods for this problem require the selection of a parametric demand model and fitting the model using historical data, while model selection is usually a hard problem in itself. Furthermore, most of the existing literature on pricing requires certain conditions on the demand model, which may not be satisfied by the estimates from data. We present a data-driven approach based only on the historical observations and the basic domain knowledge. The conditional demand distribution is estimated using non-parametric quantile regression with shape constraints. The optimal pricing and inventory decisions are determined numerically using the estimated quantiles. Smoothing and kernelization methods are used to achieve regularization and enhance the performance of the approach. Additional domain knowledge, such as concavity of demand with respect to price, can also be easily incorporated into the approach. Numerical results show that the data-driven approach is able to find close-to-optimal solutions. Smoothing, kernelization, and the incorporation of additional domain knowledge can significantly improve the performance of the approach. Chapter 4 studies inventory management for perishable products where a parameter of the demand distribution is unknown. The traditional separated estimation-optimization approach for this problem has been shown to be suboptimal. To address this issue, an integrated approach called operational statistics has been proposed. We study several important properties of operational statistics. We find that the operational statistics approach is consistent and guaranteed to outperform the traditional approach. We also show that the benefit of using operational statistics is larger when the demand variability is higher. We then generalize the operational statistics approach to the risk-averse newsvendor problem under the conditional value-at-risk (CVaR) criterion. Previous results in operational statistics can be generalized to maximize the expectation of conditional CVaR. In order to model risk-aversion to both the uncertainty in demand sampling and the uncertainty in future demand, we introduce a new criterion called the total CVaR, and find the optimal operational statistic for this new criterion.

Essays on Supply Chain Management with Model Uncertainty

Essays on Supply Chain Management with Model Uncertainty PDF Author: Mengshi Lu
Publisher:
ISBN:
Category :
Languages : en
Pages : 97

Book Description
Traditional supply chain management models typically require complete model information, including structural relationships (e.g., how pricing decisions affect customer demand), probabilistic distributions, and parameters. However, in practice, the model information may be uncertain. My dissertation research seeks to address model uncertainty in supply chain management problems using data-driven and robust methods. Incomplete information typically comes in two forms, namely, historical data and partial information. When historical data are available, data-driven methods can be used to obtain decisions directly from data, instead of estimating the model information and then using these estimates to find the optimal solution. When partial information is available, robust methods consider all possible scenarios and make decisions to hedge against the worst-case scenario effectively, instead of making simplified assumptions that could lead to significant loss. Chapter 1 provides an overview of model uncertainty in supply chain management, and discusses the limitations of the traditional methods. The main part of the dissertation is on the application of data-driven and robust methods to three widely-studied supply chain management problems with model uncertainty. Chapter 2 studies the reliable facility location problem where the joint-distribution of facility disruptions is uncertain. For this problem, usually, only partial information in the form of marginal facility disruption probabilities is available. Most existing models require the assumption that the disruptions at different locations are independent of each other. However, in practice, correlated disruptions are widely observed. We present a model that allows disruptions to be correlated with an uncertain joint distribution, and apply distributionally-robust optimization to minimize the expected cost under the worst-case distribution with the given marginal disruption probabilities. The worst-case distribution has a practical interpretation, and its sparse structure allows us to solve the problem efficiently. We find that ignoring disruption correlation could lead to significant loss. The robust method can significantly reduce the regret from model misspecification. It outperforms the traditional approach even under very mild correlation. Most of the benefit of the robust model can be captured at a relatively small cost, which makes it easy to implement in practice. Chapter 3 studies the pricing newsvendor problem where the structural relationship between pricing decisions and customer demand is unknown. Traditional methods for this problem require the selection of a parametric demand model and fitting the model using historical data, while model selection is usually a hard problem in itself. Furthermore, most of the existing literature on pricing requires certain conditions on the demand model, which may not be satisfied by the estimates from data. We present a data-driven approach based only on the historical observations and the basic domain knowledge. The conditional demand distribution is estimated using non-parametric quantile regression with shape constraints. The optimal pricing and inventory decisions are determined numerically using the estimated quantiles. Smoothing and kernelization methods are used to achieve regularization and enhance the performance of the approach. Additional domain knowledge, such as concavity of demand with respect to price, can also be easily incorporated into the approach. Numerical results show that the data-driven approach is able to find close-to-optimal solutions. Smoothing, kernelization, and the incorporation of additional domain knowledge can significantly improve the performance of the approach. Chapter 4 studies inventory management for perishable products where a parameter of the demand distribution is unknown. The traditional separated estimation-optimization approach for this problem has been shown to be suboptimal. To address this issue, an integrated approach called operational statistics has been proposed. We study several important properties of operational statistics. We find that the operational statistics approach is consistent and guaranteed to outperform the traditional approach. We also show that the benefit of using operational statistics is larger when the demand variability is higher. We then generalize the operational statistics approach to the risk-averse newsvendor problem under the conditional value-at-risk (CVaR) criterion. Previous results in operational statistics can be generalized to maximize the expectation of conditional CVaR. In order to model risk-aversion to both the uncertainty in demand sampling and the uncertainty in future demand, we introduce a new criterion called the total CVaR, and find the optimal operational statistic for this new criterion.

Essays on Supply Chain Management in Emerging Markets

Essays on Supply Chain Management in Emerging Markets PDF Author: Micha Hirschinger
Publisher: Springer
ISBN: 3658119462
Category : Business & Economics
Languages : en
Pages : 135

Book Description
Micha Hirschinger emphasizes the importance of foresight on logistics and institutions in particular for effective decision making as distinct research in this context is limited. He applies a systematic and transferable multi-method approach based on Delphi studies and fuzzy c-means cluster analysis to develop profound scenarios for the future. He uses the relevance of information-processing requirements to investigate whether centralization of purchasing organizations increases functional efficiency. The author finally shows how a sharing-economy business model transfer could help to overcome the limited access to factor markets, especially trucks, at the base of the pyramid.

Essays on Supply Chain Inventories Under Uncertainty

Essays on Supply Chain Inventories Under Uncertainty PDF Author: Christian Bohner
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

Book Description


Essays on supply chain analytics

Essays on supply chain analytics PDF Author: Mert Hakan Hekimoglu
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

Book Description


Three Essays on Mass Customization

Three Essays on Mass Customization PDF Author: Gensheng Liu
Publisher:
ISBN:
Category :
Languages : en
Pages : 338

Book Description


Four Essays on Supplier Selection

Four Essays on Supplier Selection PDF Author: Hayk Manucharyan
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description
Keywords: uncertainty, discrete choice analysis, multi-criteria decision-making, supply chain management, supplier selection.

Essays on Trade Costs, Supply Chain Uncertainty and CEO Compensation

Essays on Trade Costs, Supply Chain Uncertainty and CEO Compensation PDF Author: Valentina Kozlova
Publisher:
ISBN:
Category : Business logistics
Languages : en
Pages : 86

Book Description
This dissertation consists of two chapters that examine high managerial pay and supply chain uncertainty. Chapter 1 constructs a game-theoretic model in which high CEO pay emerges as the outcome of an arms race, with each firm paying its CEO highly to protect its competitive position against rivals who also pay highly. For an arms race to emerge, highly-paid CEOs must generate idiosyncratic, privately-known internal effects on profit, and CEO pay disparities must also generate asymmetric profit differences from external effects beyond the simple differences in pay. If the distribution of internal effects satisfies a key uniformity condition, an arms race emerges as the only equilibrium of the game. Chapter 2 examines the impact of supply chain uncertainty and ordering costs on trade. Importers hold safety stock to hedge against delays in delivery. An increase in supply chain uncertainty raises safety stocks, increases inventory costs, and reduces imports from locations with high delivery time uncertainty. An increase in order costs reduces a firm's shipping frequency and increases average inventory holding cost for the firm's base inventory stock. As a result, firms import less from locations with high ordering costs to reduce average inventory holding costs. Detailed data on actual and expected arrival times of vessels at U.S. ports serve to measure supply chain uncertainty consistent with the theory. Combined with detailed data on U.S. imports, freight charges and unit values, a 10 percent increase in supply-chain uncertainty lowers imports by as much as 3.7 percent. This is evidence that delivery uncertainty imposes a cost on imports according to the management of safety stocks. A one percent increase in ordering costs lowers imports by as much as 1.2 percent. Ordering costs impact the intensive margin of trade due to the management of base inventory stocks.

Essays in Supply Chain Contracts

Essays in Supply Chain Contracts PDF Author: Wenming Chung
Publisher:
ISBN:
Category : Business logistics
Languages : en
Pages : 326

Book Description


Essays in Supply Chain Management

Essays in Supply Chain Management PDF Author: Mahesh Nagarajan
Publisher:
ISBN:
Category :
Languages : en
Pages : 328

Book Description


Essays on Supply Chain Management

Essays on Supply Chain Management PDF Author: Yue Jin
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

Book Description