TY - JOUR
T1 - Approximation algorithms for dynamic assortment optimization models
AU - Aouad, Ali
AU - Levi, Retsef
AU - Segev, Danny
N1 - Funding Information:
Funding:The work of Ali Aouad and Retsef Levi was partially supported by the National Science Foundation (NSF) [Grant CMMI-1537536]. Danny Segev’s research on this project was supported by the Israel Science Foundation (ISF) [Grant 148/16].
Publisher Copyright:
© 2018 INFORMS
PY - 2019
Y1 - 2019
N2 - We consider the single-period joint assortment and inventory planning problem with stochastic demand and dynamic substitution across products, motivated by applications in highly differentiated markets, such as online retailing and airlines. This class of problems is known to be notoriously hard to deal with from a computational standpoint. In fact, prior to the present paper, only a handful of modeling approaches were shown to admit provably good algorithms, at the cost of strong restrictions on customers’ choice outcomes. Our main contribution is to provide the first efficient algorithms with provable performance guarantees for a broad class of dynamic assortment optimization models. Under general rank-based choice models, our approximation algorithm is best possible with respect to the price parameters, up to lower-order terms. In particular, we obtain a constant-factor approximation under horizontal differentiation, where product prices are uniform. In more structured settings, where the customers’ ranking behavior is motivated by price and quality cues, we derive improved guarantees through tailor-made algorithms. In extensive computational experiments, our approach dominates existing heuristics in terms of revenue performance, as well as in terms of speed, given the myopic nature of our methods. From a technical perspective, we introduce a number of novel algorithmic ideas of independent interest, and unravel hidden relations to submodular maximization.
AB - We consider the single-period joint assortment and inventory planning problem with stochastic demand and dynamic substitution across products, motivated by applications in highly differentiated markets, such as online retailing and airlines. This class of problems is known to be notoriously hard to deal with from a computational standpoint. In fact, prior to the present paper, only a handful of modeling approaches were shown to admit provably good algorithms, at the cost of strong restrictions on customers’ choice outcomes. Our main contribution is to provide the first efficient algorithms with provable performance guarantees for a broad class of dynamic assortment optimization models. Under general rank-based choice models, our approximation algorithm is best possible with respect to the price parameters, up to lower-order terms. In particular, we obtain a constant-factor approximation under horizontal differentiation, where product prices are uniform. In more structured settings, where the customers’ ranking behavior is motivated by price and quality cues, we derive improved guarantees through tailor-made algorithms. In extensive computational experiments, our approach dominates existing heuristics in terms of revenue performance, as well as in terms of speed, given the myopic nature of our methods. From a technical perspective, we introduce a number of novel algorithmic ideas of independent interest, and unravel hidden relations to submodular maximization.
KW - Approximation algorithms
KW - Assortment planning
KW - Choice models
KW - Dynamic optimization
KW - Inventory management
KW - Submodularity
UR - http://www.scopus.com/inward/record.url?scp=85068553366&partnerID=8YFLogxK
U2 - 10.1287/moor.2018.0933
DO - 10.1287/moor.2018.0933
M3 - Article
AN - SCOPUS:85068553366
VL - 44
SP - 487
EP - 511
JO - Mathematics of Operations Research
JF - Mathematics of Operations Research
SN - 0364-765X
IS - 2
ER -