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Optimal Pricing and Replenishment in an Inventory System. Owen Wu University of British Columbia June 11, 2004 Joint work with Hong Chen and David Yao. Literature: Multiperiod Inventory Control Problem. Questions.
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Optimal Pricing and Replenishment in an Inventory System Owen Wu University of British Columbia June 11, 2004 Joint work with Hong Chen and David Yao
Questions • What is the impact of demand variability on pricing and inventory replenishment decisions? • How to price dynamically within each replenishment cycle? • When is dynamic pricing significantly more profitable than static pricing?
Poisson Poisson • Unit Poisson process: • Cumulative demand: Demand Model: Diffusion • Brownian model can be viewed as an alternative model that approximates the real world.
Inventory X(t) S t 0 Pricing and Inventory Control • Continuous review. Infinite horizon. Zero lead time.No backlog or lost sale. • Inventory policy: order up to S whenever inventory level reaches zero. • Pricing strategy: single price per cycle, dynamic pricing. • Objective:To maximize the expected discounted/average profit.
holding cost hX(t) per unit of time cycle revenue: pS replenishment cost c(S) • Long-run average profit under (S, ): Additional holding cost per unit of time due to demand uncertainty Single Price per Replenishment Cycle • Price p induces demand:
Example: c(S)=100+5S,(p)=50–p Impact of Demand Uncertainty
Sequential optimization:Marketing:Operations: • Joint optimization: Joint Sequential Example: c(S)=100+5S,(p)=50–p,h=1. Sequential Joint Joint vs. Sequential Optimization
Inventory level p1 S S(N–1)/N S(N–2)/N p2 p3 pN S/N 0 1 2 N–1 N Dynamic Pricing
The marginal profit • or Properties • V(, S) is pseudo-concave in
Impact of Demand Uncertainty (Fixed S)
Non-monotonicity and jumps (not very common) 1* p()=10–10-3+–1 c(S)=50+S2 h=0.2 S* 2* Impact of Demand Uncertainty(Joint Optimization)
Profit Improvement over Single Price • Quantify the advantage of dynamic pricing. • When is the improvement significant? • (N, a,b, h, , K, c)(N, a–c, Khb, hb22)
c(S)=100+5S,(p)=50–p, h=1, =10. 50 50 50 Number of Prices
Optimal Profit under Single Price c(S)=100+S (p)=50–p h
1% 2% 3% h h Percentage Profit Improvement
Percentage improvement under 8 prices (%) h Optimal average profit under single price h Profit improvement under 8 prices h c(S)=100+10S (p)=50–p h
Lemma: For n>m, • Theorem: Let be the optimal strategy, then • Heuristic Bound: Upper Bound on Profit Improvement
Heuristic Bound h Upper Bound on Profit Improvement
Inventory level p1 S S(N–1)/N p2 pN S/N 0 s/N pN+1 pN+M s(N–1)/N s Full Back-Order Case • (s, S) policy. s<0<S. • Properties: If N=M,
Conclusion: Back to opening questions • What is the impact of demand variability on pricing and inventory replenishment decisions? • How to price dynamically within each replenishment cycle? • When is dynamic pricing significantly more profitable than static pricing? • Most of the results hold under discounted objective.