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Stochastic call center staffing with uncertain arrival,service and abandonment rates: A Bayesian perspective
Authors:Tevfik Aktekin  Tahir Ekin
Institution:1. Department of Decision Sciences, Peter T. Paul College of Business and Economics, University of New Hampshire, New Hampshire;2. Department of Computer Information Systems and Quantitative Methods, McCoy College of Business, Texas State University, Texas
Abstract:In this article, we introduce staffing strategies for the Erlang‐A queuing system in call center operations with uncertain arrival, service, and abandonment rates. In doing so, we model the system rates using gamma distributions that create randomness in operating characteristics used in the optimization formulation. We divide the day into discrete time intervals where a simulation based stochastic programming method is used to determine staffing levels. More specifically, we develop a model to select the optimal number of agents required for a given time interval by minimizing an expected cost function, which consists of agent and abandonment (opportunity) costs, while considering the service quality requirements such as the delay probability. The objective function as well as the constraints in our formulation are random variables. The novelty of our approach is to introduce a solution method for the staffing of an operation where all three system rates (arrival, service, and abandonment) are random variables. We illustrate the use of the proposed model using both real and simulated call center data. In addition, we provide solution comparisons across different formulations, consider a dynamic extension, and discuss sensitivity implications of changing constraint upper bounds as well as prior hyper‐parameters. © 2016 Wiley Periodicals, Inc. Naval Research Logistics 63: 460–478, 2016
Keywords:Bayesian inference  call center operations  stochastic programming  augmented probability simulation  Bayesian queuing
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