Abstract
We consider the staffing and shift-scheduling problems in call centers and propose a solution in one step. It consists in determining the minimum-cost number of agents to be assigned to each shift of the scheduling horizon so as to reach the required customer quality of service. We assume that the mean call arrival rate in each period of the horizon is a random variable following a continuous distribution. We model the resulting optimization problem as a stochastic program involving joint probabilistic constraints. We propose a solution approach based on linear approximations to provide approximate solutions of the problem. We finally compare them with other approaches and give numerical results carried out on a real-life instance. These results show that the proposed approach compares well with previously published approaches both in terms of risk management and cost minimization.
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References
Aksin, Z., Armony, M., Mehrotra, V.: The modern call center: a multi-disciplinary perspective on operations management research. Prod. Oper. Manage. 16, 665–688 (2007)
Cezik, M.T., L’Ecuyer, P.: Staffing multiskill call centers via linear programming and simulation. Manage. Sci. 54, 310–323 (2008)
Cheng, J., Lisser, A.: A second-order cone programming approach for linear programs with joint probabilistic constraints. Oper. Res. Lett. 40, 325–328 (2012)
Erdoğan, E., Iyengar, G.: On two-stage convex chance constrained problems. Math. Methods of Oper. Res. 65, 115–140 (2007)
Gans, N., Koole, G., Mandelbaum, A.: Telephone call centers: tutorial, review, and research prospects. Manuf. Serv. Oper. Manage. 5, 79–141 (2003)
Gans, N., Shen, H., Zhou, Y.P.: Parametric stochastic programming models for call-center workforce scheduling. working paper April 2012
Gross, D., Shortle, J.F., Thompson, J.M., Harris, C.M.: Fundamentals of Queueing Theory. Wiley, New York (2008)
Gurvich, I., Luedtke, J., Tezcan, T.: Staffing call centers with uncertain demand forecasts: a chance-constrained optimization approach. Manage. Sci. 56, 1093–1115 (2010)
Jongbloed, G., Koole, G.: Managing uncertainty in call centers using poisson mixtures. Appl. Stoch. Models Bus. Indus. 17, 307–318 (2001)
Liao, S., van Delft, C., Vial, J.P.: Distributionally robust workforce scheduling in call centers with uncertain arrival rates. Optim. Methods Softw. 28, 501–522 (2013)
Liao, S., Koole, G., van Delft, C., Jouini, O.: Staffing a call center with uncertain non-stationary arrival rate and flexibility. OR Spectr. 34, 691–721 (2012)
Luedtke, J., Ahmed, S., Nemhauser, G.L.: An integer programming approach for linear programs with probabilistic constraints. In: Fischetti, M., Williamson, D.P. (eds.) IPCO 2007. LNCS, vol. 4513, pp. 410–423. Springer, Heidelberg (2007)
Mehrotra, V., Ozlük, O., Saltzman, R.: Intelligent procedures for intra-day updating of call center agent schedules. Prod. Oper. Manage. 19, 353–367 (2009)
Prékopa, A.: Probabilistic programming. Handbooks Oper. Res. Manage. Sci. 10, 267–351 (2003)
Robbins, T.R., Harrison, T.P.: A stochastic programming model for scheduling call centers with global service level agreements. Eur. J. Oper. Res. 207, 1608–1619 (2010)
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Support for this research was provided by DIGITEO Research Foundation under Grant 2012-060D.
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Excoffier, M., Gicquel, C., Jouini, O., Lisser, A. (2015). Comparison of Stochastic Programming Approaches for Staffing and Scheduling Call Centers with Uncertain Demand Forecasts. In: Pinson, E., Valente, F., Vitoriano, B. (eds) Operations Research and Enterprise Systems. ICORES 2014. Communications in Computer and Information Science, vol 509. Springer, Cham. https://doi.org/10.1007/978-3-319-17509-6_10
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DOI: https://doi.org/10.1007/978-3-319-17509-6_10
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