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ALENEX
2008

Comparing Online Learning Algorithms to Stochastic Approaches for the Multi-Period Newsvendor Problem

13 years 6 months ago
Comparing Online Learning Algorithms to Stochastic Approaches for the Multi-Period Newsvendor Problem
The multi-period newsvendor problem describes the dilemma of a newspaper salesman--how many paper should he purchase each day to resell, when he doesn't know the demand? We develop approaches for this well known problem based on two machine learning algorithms: Weighted Majority of Warmuth and Littlestone, and Follow the Perturbed Leader of Kalai and Vempala. With some modified analysis, it isn't hard to show theoretical bounds for our modified versions of these algorithms. More importantly, we test the algorithms in a variety of simulated conditions, and compare the results to those given by traditional stochastic approaches which assume more information about the demands than is typically known. Our tests indicate that such online learning algorithms can perform well in comparison to stochastic approaches, even when the stochastic approaches are given perfect information.
Shawn O'Neil, Amitabh Chaudhary
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where ALENEX
Authors Shawn O'Neil, Amitabh Chaudhary
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