Dynamic Pricing with Demand Covariates
Sheng Qiang, Mohsen Bayati

TL;DR
This paper analyzes a dynamic pricing model with demand covariates, showing that greedy least squares algorithms can achieve optimal regret in data-rich environments and that adding covariates can improve performance.
Contribution
It proves that GILS achieves asymptotically optimal regret with demand covariates and reveals that including any covariates can make GILS optimal even if they carry no information.
Findings
GILS achieves logarithmic regret in demand covariate settings.
Including any covariates in GILS can make it asymptotically optimal.
Numerical validation on synthetic and real data supports theoretical results.
Abstract
We consider a firm that sells products over periods without knowing the demand function. The firm sequentially sets prices to earn revenue and to learn the underlying demand function simultaneously. A natural heuristic for this problem, commonly used in practice, is greedy iterative least squares (GILS). At each time period, GILS estimates the demand as a linear function of the price by applying least squares to the set of prior prices and realized demands. Then a price that maximizes the revenue, given the estimated demand function, is used for the next time period. The performance is measured by the regret, which is the expected revenue loss from the optimal (oracle) pricing policy when the demand function is known. Recently, den Boer and Zwart (2014) and Keskin and Zeevi (2014) demonstrated that GILS is sub-optimal. They introduced algorithms which integrate forced price…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Consumer Market Behavior and Pricing · Supply Chain and Inventory Management
