Estimating cross-training call center capacity through simulation

David A. Munoz , Nathaniel D. Bastian

Journal of Systems Science and Systems Engineering ›› 2016, Vol. 25 ›› Issue (4) : 448 -468.

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Journal of Systems Science and Systems Engineering ›› 2016, Vol. 25 ›› Issue (4) : 448 -468. DOI: 10.1007/s11518-015-5286-9
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Estimating cross-training call center capacity through simulation

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Abstract

Call centers have grown world-wide during the past decade. One of the most important aspects considered by call center managers is the optimization of its operators, which implies covering the highly variable demand and finding an efficient way to assign people to certain shifts in order to achieve a desirable service level and abandonment rate. Another challenge is determining which system setup is appropriate for the specific call center. Should we have a single-skill call center or multi-skill call center? If we do have the latter, how many multi-skill agents should we have on staff? In this case study, we generate and analyze discrete-event systems simulation-optimization models to test the behavior of a real-world call center under the actual configuration and under different levels of cross-training. The model results help call center managers by: 1) determining the optimal number of operators needed for different staff configurations in order to achieve the targets for service level and abandonment; 2) providing information about the trade-off between the key measurements in the call center; and 3) providing useful information about the number of operators needed and used for each hour of operation to estimate the number of four-hour shifts required to achieve the performance targets. Our experimental findings from this case study suggest that a bi-skill call center is economically better in the long-run compared to a full-skill or single-skill call center. This case study augments the call center body of knowledge by providing additional managerial insights for the operations management community.

Keywords

Call centers / cross-training / discrete-event systems simulation / simulation optimization / service operations / service systems

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David A. Munoz, Nathaniel D. Bastian. Estimating cross-training call center capacity through simulation. Journal of Systems Science and Systems Engineering, 2016, 25(4): 448-468 DOI:10.1007/s11518-015-5286-9

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References

[1]

Aksin Z., Armony M., Mehrotra V.. The modern call center: a multi-disciplinary perspective on operations management research. Production and Operations Management, 2007, 16(6): 665-688.

[2]

Atlason J., Epelman M.A., Henderson S.G.. Call center staffing with simulation and cutting plane methods. Annals of Operations Research, 2004, 127: 333-358.

[3]

Atlason J., Epelman M. A., Henderson S. G.. Optimizing call center staffing using simulation and analytic center cutting-plane methods. Management Science, 2008, 54(2): 295-309.

[4]

Attia E. A., Duquenne P., Le-Lann J. M.. Considering skills evolutions in multi-skilled workforce allocation with flexible working hours. International Journal of Production Research, 2014, 52(15): 4548-4573.

[5]

Bhulai S., Koole G., Pot A.. Simple methods for shift scheduling in multiskill call centers. Manufacturing & Service Operations Management, 2008, 10(3): 411-420.

[6]

Bolotin V.. Telephone circuit holding time distributions, 1994 125-134.

[7]

Carson, Y. & Maria, A. (1997). Simulation optimization: methods and applications. In: Andradbttir A., Healy K., Withers D. & Nelson B. (eds.), Proceedings of the 1997 Winter Simulation Conference: 118–126, Atlanta, GA., December 7-10, 1997.

[8]

Cezik M.T., L’Ecuyer P.. Staffing multiskill call centers via linear programming and simulation. Management Science, 2008, 54(2): 310-323.

[9]

Cronin J.J., Brady M.K., Hult G.T.M.. Assessing the effects of quality, value, and customer satisfaction on consumer behavioral intentions in service environments. Journal of Retailing, 2000, 76(2): 193-218.

[10]

Fu, M. C., Chen, C. H. & Shi, L. (2008). Some topics for simulation optimization. In: Mason S., Hill R., Mönch L., Rose O., Jefferson T. & Fowle J. (eds.). Proceedings of the 2008 Winter Simulation Conference: 27–38, Miami, FL., December 7-10, 1998.

[11]

Gans N., Koole G., Mandelbaum A.. Telephone call centers: tutorial, review, and research prospects. Manufacturing & Service Operations Management, 2003, 5(2): 79-141.

[12]

Iravani S. M., Kolfal B., Van Oyen M. P.. Call-center labor cross-training: it's a small world after all. Management Science, 2007, 53(7): 1102-1112.

[13]

Mandelbaum A., Sakov A., Zeltyn S.. Empirical analysis of a call center. Technical report, Technion, Israel Institute of Technology, 2000

[14]

Mehrotra, V. & J. Fama. (2003). Call center simulation modeling: methods, challenges, and opportunities. In: Ferrin D, Morrice D, Sanchez P & Chick S (eds.). Proceedings of the 2003 Winter Simulation Conference: 135–143, New Orleans, LA., December 7-10, 2003.

[15]

Poster W. R.. Who's on the line? Indian call center agents pose as Americans for US-outsourced firms. Industrial Relations: A Journal of Economy and Society, 2007, 46(2): 271-304.

[16]

Robbins T., Medeiros D., Harrison T.. Cross training in call centers with uncertain arrivals and global service level agreements. International Journal of Operations and Quantitative Management, 2010, 16(3): 307-329.

[17]

Robbins, T., Medeiros, D. & Harrison, T. (2010). Does the Erlang C model fit in real call centers? In: Hugan J., Yucesan E., Fu M., Johansson B., Jain S. & Montoya-Torres J. (eds.). Proceedings of the 2010 Winter Simulation Conference: 2853–2864, Baltimore, MD., December 5-8, 2010.

[18]

Wallace R. B., Whitt W.. A staffing algorithm for call centers with skill-based routing. Manufacturing & Service Operations Management, 2005, 7(4): 276-294.

[19]

Xu J., Huang E., Chen C. H., Lee L. H.. Simulation optimization: a review and exploration in the new era of cloud computing and big data. Asia-Pacific Journal of Operational Research, 2015, 32(3): 1-34.

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