Title :
Pricing in dynamic advance reservation games
Author :
Simhon, Eran ; Cramer, Carrie ; Lister, Zachary ; Starobinski, David
Author_Institution :
Coll. of Eng., Boston Univ., Boston, MA, USA
fDate :
April 26 2015-May 1 2015
Abstract :
We analyze the dynamics of advance reservation (AR) games: games in which customers compete for limited resources and can reserve resources for a fee. We introduce and analyze two different learning models. In the first model, called strategy-learning, customers are informed of the strategy adopted in the previous iteration, while in the second model, called action-learning, customers estimate the strategy by observing previous actions. We prove that in the strategy-learning model, convergence to equilibrium is guaranteed. In contrast, in the action-learning model, the system converges only if an equilibrium in which none of the customers makes AR exists. Based on those results, we show that if the provider is risk-averse and sets the AR fee low enough, action-learning yields on average greater profit than strategy-learning. However, if the provider is risk-taking and sets a high AR fee, action-learning provably yields zero profit in the long term in contrast to strategy-learning.
Keywords :
computer games; learning (artificial intelligence); pricing; action-learning model; dynamic advance reservation games; pricing; resource management software; strategy-learning model; Analytical models; Conferences; Convergence; Games; Pricing; Random variables; Servers;
Conference_Titel :
Computer Communications Workshops (INFOCOM WKSHPS), 2015 IEEE Conference on
Conference_Location :
Hong Kong
DOI :
10.1109/INFCOMW.2015.7179442