Title of article :
A Bayesian Stochastic Programming Approach to an Employee Scheduling Problem
Author/Authors :
P.، Morton, David نويسنده , , Elmira، Popova, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
Bayesian forecasting models provide distributional estimates for random parameters, and relative to classical schemes, have the advantage that they can rapidly capture changes in nonstationary systems using limited historical data. Unlike deterministic optimization, stochastic programs explicitly incorporate distributions for random parameters in the model formulation, and thus have the advantage that the resulting solutions more fully hedge against future contingencies. In this paper, we exploit the strengths of Bayesian prediction and stochastic programming in a rolling-horizon approach that can be applied to solve realworld problems. We illustrate the methodology on an employee production scheduling problem with uncertain up-times of manufacturing equipment and uncertain production rates. Computational results indicate the value of our approach.
Keywords :
Use of the linear regression models , classification and confirmation , Method of ridge identification , Canonical form and rising ridges , Analysis of fitting ridge models with linear and nonlinear regression
Journal title :
IIE TRANSACTIONS
Journal title :
IIE TRANSACTIONS