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An Enhanced Concave Program Relaxation for Choice Network Revenue Management

Research output: Working paper

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An Enhanced Concave Program Relaxation for Choice Network Revenue Management. / Meissner, J; Strauss, A K; Talluri, K.
Lancaster University: The Department of Management Science, 2011. (Management Science Working Paper Series).

Research output: Working paper

Harvard

Meissner, J, Strauss, AK & Talluri, K 2011 'An Enhanced Concave Program Relaxation for Choice Network Revenue Management' Management Science Working Paper Series, The Department of Management Science, Lancaster University.

APA

Meissner, J., Strauss, A. K., & Talluri, K. (2011). An Enhanced Concave Program Relaxation for Choice Network Revenue Management. (Management Science Working Paper Series). The Department of Management Science.

Vancouver

Meissner J, Strauss AK, Talluri K. An Enhanced Concave Program Relaxation for Choice Network Revenue Management. Lancaster University: The Department of Management Science. 2011. (Management Science Working Paper Series).

Author

Meissner, J ; Strauss, A K ; Talluri, K. / An Enhanced Concave Program Relaxation for Choice Network Revenue Management. Lancaster University : The Department of Management Science, 2011. (Management Science Working Paper Series).

Bibtex

@techreport{f5c7a01569614c82aa7d30e2f65ab104,
title = "An Enhanced Concave Program Relaxation for Choice Network Revenue Management",
abstract = "The network choice revenue management problem models customers as choosing from an offerset, and the firm decides the best subset to offer at any given moment to maximize expected revenue. The resulting dynamic program for the firm is intractable and approximated by a deterministic linear program called the CDLP which has an exponential number of columns. However, under the choice-set paradigm when the segment consideration sets overlap, the CDLP is difficult to solve. Column generation has been proposed but finding an entering column has been shown to be NP-hard. In this paper, starting with a concave program formulation based on segment-level consideration sets called SDCP, we add a class of valid inequalities called product cuts, that project onto subsets of intersections. In addition we propose a natural direct tightening of the SDCP called kSDCP, and compare the performance of both methods on the benchmark data sets in the literature. Both the product cuts and the kSDCP method are very simple and easy to implement, work with general discrete choice models and are applicable to the case of overlapping segment consideration sets. In our computational testing SDCP with product cuts achieves the CDLP value at a fraction of the CPU time taken by column generation and hence has the potential to be scalable to industrial-size problems.",
keywords = "Bid Prices, Yield Management, Heuristics, Discrete-Choice, Network Revenue Management",
author = "J Meissner and Strauss, {A K} and K Talluri",
year = "2011",
language = "English",
series = "Management Science Working Paper Series",
publisher = "The Department of Management Science",
type = "WorkingPaper",
institution = "The Department of Management Science",

}

RIS

TY - UNPB

T1 - An Enhanced Concave Program Relaxation for Choice Network Revenue Management

AU - Meissner, J

AU - Strauss, A K

AU - Talluri, K

PY - 2011

Y1 - 2011

N2 - The network choice revenue management problem models customers as choosing from an offerset, and the firm decides the best subset to offer at any given moment to maximize expected revenue. The resulting dynamic program for the firm is intractable and approximated by a deterministic linear program called the CDLP which has an exponential number of columns. However, under the choice-set paradigm when the segment consideration sets overlap, the CDLP is difficult to solve. Column generation has been proposed but finding an entering column has been shown to be NP-hard. In this paper, starting with a concave program formulation based on segment-level consideration sets called SDCP, we add a class of valid inequalities called product cuts, that project onto subsets of intersections. In addition we propose a natural direct tightening of the SDCP called kSDCP, and compare the performance of both methods on the benchmark data sets in the literature. Both the product cuts and the kSDCP method are very simple and easy to implement, work with general discrete choice models and are applicable to the case of overlapping segment consideration sets. In our computational testing SDCP with product cuts achieves the CDLP value at a fraction of the CPU time taken by column generation and hence has the potential to be scalable to industrial-size problems.

AB - The network choice revenue management problem models customers as choosing from an offerset, and the firm decides the best subset to offer at any given moment to maximize expected revenue. The resulting dynamic program for the firm is intractable and approximated by a deterministic linear program called the CDLP which has an exponential number of columns. However, under the choice-set paradigm when the segment consideration sets overlap, the CDLP is difficult to solve. Column generation has been proposed but finding an entering column has been shown to be NP-hard. In this paper, starting with a concave program formulation based on segment-level consideration sets called SDCP, we add a class of valid inequalities called product cuts, that project onto subsets of intersections. In addition we propose a natural direct tightening of the SDCP called kSDCP, and compare the performance of both methods on the benchmark data sets in the literature. Both the product cuts and the kSDCP method are very simple and easy to implement, work with general discrete choice models and are applicable to the case of overlapping segment consideration sets. In our computational testing SDCP with product cuts achieves the CDLP value at a fraction of the CPU time taken by column generation and hence has the potential to be scalable to industrial-size problems.

KW - Bid Prices

KW - Yield Management

KW - Heuristics

KW - Discrete-Choice

KW - Network Revenue Management

M3 - Working paper

T3 - Management Science Working Paper Series

BT - An Enhanced Concave Program Relaxation for Choice Network Revenue Management

PB - The Department of Management Science

CY - Lancaster University

ER -