Session | ||
SA6 - FI1: Risk management
| ||
Presentations | ||
Randomized policy optimization for optimal stopping UCLA Anderson School of Management, University of California, Los Angeles, CA, United States of America Optimal stopping is the problem of determining when to stop a stochastic system in order to maximize reward. We propose a methodology for optimal stopping based on randomized linear policies, which choose to stop with a probability that is determined by a weighted sum of basis functions. We develop a practical heuristic for solving our randomized policy problem, and numerically show that our approach can substantially outperform state-of-the-art methods. Optimal Operational versus Financial Hedging for a Risk-Averse Firm 1University of Michigan, United States of America; 2Renmin University of China, China A multinational risk averse newsvendor produces goods at home (domestically) and sells both overseas and at home, over multiple periods. We consider risks due to uncertain exchange rate as well as uncertain demand and investigate the effectiveness of (a) general financial hedging contracts and (b) operational hedging, which is to allow production both domestically and overseas. We evaluate both types of hedging and describe the situations that favor each type of hedging. How does risk hedging impact operations? Insights from a price-setting newsvendor model University of Hong Kong Firms can adjust operations based on financial asset price impact on product demand. We develop a model integrating financial risk hedging into pricing decisions. Hedging generally lowers optimal price and service level. The impact of asset price on demand determines the effect on service level. Our model reduces risk without significantly reducing operational profit. Including operational payoff functions reveals when hedging reduces optimal operational levels. |