LGGTOct 30, 2023

From Stream to Pool: Pricing Under the Law of Diminishing Marginal Utility

CMU
arXiv:2310.19220v3h-index: 6
Originality Highly original
AI Analysis

This work addresses pricing strategies for monopolist sellers facing repeated customer interactions, offering theoretical improvements over traditional stream models.

The paper tackles the problem of dynamic pricing under diminishing marginal utility by introducing a pool-based model where customers' valuations decrease with each purchase, and presents a non-adaptive policy with a 1/k competitive ratio and an adaptive policy with O(k^{2/3} n^{2/3}) regret.

Dynamic pricing models often posit that a $\textbf{stream}$ of customer interactions occur sequentially, where customers' valuations are drawn independently. However, this model is not entirely reflective of the real world, as it overlooks a critical aspect, the law of diminishing marginal utility, which states that a customer's marginal utility from each additional unit declines. This causes the valuation distribution to shift towards the lower end, which is not captured by the stream model. This motivates us to study a pool-based model, where a $\textbf{pool}$ of customers repeatedly interacts with a monopolist seller, each of whose valuation diminishes in the number of purchases made according to a discount function. In particular, when the discount function is constant, our pool model recovers the stream model. We focus on the most fundamental special case, where a customer's valuation becomes zero once a purchase is made. Given $k$ prices, we present a non-adaptive, detail-free (i.e., does not "know" the valuations) policy that achieves a $1/k$ competitive ratio, which is optimal among non-adaptive policies. Furthermore, based on a novel debiasing technique, we propose an adaptive learn-then-earn policy with a $\tilde O(k^{2/3} n^{2/3})$ regret.

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