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Kim, Gi-Soo
Statistical Decision Making
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Semi-Parametric Contextual Pricing Algorithm using Cox Proportional Hazards Model

Author(s)
Choi, Young-GeunKim, Gi-SooChoi, YunseoCho, WooseongPaik, Myunghee ChoOh, Min-Hwan
Issued Date
2023-07-23
URI
https://scholarworks.unist.ac.kr/handle/201301/67921
Citation
International Conference on Machine Learning, pp.5771 - 5786
Abstract
Contextual dynamic pricing is a problem of setting prices based on current contextual information and previous sales history to maximize revenue. A popular approach is to postulate a distribution of customer valuation as a function of contextual information and the baseline valuation. A semi-parametric setting, where the context effect is parametric and the baseline is nonparametric, is of growing interest due to its flexibility. A challenge is that customer valuation is almost never observable in practice and is instead type-I interval censored by the offered price. To address this challenge, we propose a novel semi-parametric contextual pricing algorithm for stochastic contexts, called the epoch-based Cox proportional hazards Contextual Pricing (CoxCP) algorithm. To our best knowledge, our work is the first to employ the Cox model for customer valuation. The CoxCP algorithm has a high-probability regret upper bound of Õ(T
Publisher
ML Research Press

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