Title :
Demand Learning and Dynamic Pricing under Competition in a State-Space Framework
Author :
Chung, Byung Do ; Li, Jiahan ; Yao, Tao ; Kwon, Changhyun ; Friesz, Terry L.
Author_Institution :
Pennsylvania State Univ., University Park, PA, USA
fDate :
5/1/2012 12:00:00 AM
Abstract :
In this paper, we propose a revenue optimization framework integrating demand learning and dynamic pricing for firms in monopoly or oligopoly markets. We introduce a state-space model for this revenue management problem, which incorporates game-theoretic demand dynamics and nonparametric techniques for estimating the evolution of underlying state variables. Under this framework, stringent model assumptions are removed. We develop a new demand learning algorithm using Markov chain Monte Carlo methods to estimate model parameters, unobserved state variables, and functional coefficients in the nonparametric part. Based on these estimates, future price sensitivities can be predicted, and the optimal pricing policy for the next planning period is obtained. To test the performance of demand learning strategies, we solve a monopoly firm´s revenue maximizing problem in simulation studies. We then extend this paradigm to dynamic competition, where the problem is formulated as a differential variational inequality. Numerical examples show that our demand learning algorithm is efficient and robust.
Keywords :
Markov processes; Monte Carlo methods; game theory; marketing; monopoly; nonparametric statistics; oligopoly; optimisation; pricing; strategic planning; taxation; Markov chain Monte Carlo method; demand learning algorithm; differential variational inequality; dynamic pricing; functional coefficients; future price sensitivities; game theoretic demand dynamics; model parameter estimation; monopoly market; nonparametric technique; oligopoly market; optimal pricing policy; planning period; revenue management problem; revenue maximizing problem; revenue optimization framework; state-space model; unobserved state variable; Equations; Estimation; Markov processes; Mathematical model; Predictive models; Pricing; Sensitivity; Competition; Markov chain Monte Carlo; demand learning; differential variational inequality; dynamic pricing; nonlinear time series;
Journal_Title :
Engineering Management, IEEE Transactions on
DOI :
10.1109/TEM.2011.2140323