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Pricing Loss Leaders Can be Hard

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Abstract

Consider the problem of pricing n items under an unlimited supply with m single minded buyers, each of which is interested in at most k of the items. The goal is to price each item with profit margin p 1 , p 2 ,…, p n so as to maximize the overall profit. There is an O(k)-approximation algorithm by Balcan and Blum when the price on each item must be above its margin cost; i.e., each p i > 0. We investigate the above problem when the seller is allowed to price some of the items below their margin cost. It was shown by Balcan et al. that by pricing some of the items below cost, the seller could possibly increase the maximum profit by Ω(log n) times. These items sold at low prices to stimulate other profitable sales are usually called “loss leader”. It is unclear what kind of approximation guarantees are achievable when some of the items can be priced below cost. Understanding this question is posed as an open problem by Balcan and Blum. In this paper, we give a strong negative result for the problem of pricing loss leaders. We prove that assuming the Unique Games Conjecture (UGC), there is no constant approximation algorithm for item pricing with prices below cost allowed even when each customer is interested in at most three items. Conceptually, our result indicates that although it is possible to make more money by selling some items below their margin cost, it can be computationally intractable to do so.

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Correspondence to Yi Wu.

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This work is partially supported by the National Natural Science Foundation of China under Grant Nos. 91024028, 91024031.

A preliminary version of the paper appeared in the Proceedings of ICS 2011.

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Wu, Y. Pricing Loss Leaders Can be Hard. J. Comput. Sci. Technol. 27, 718–726 (2012). https://doi.org/10.1007/s11390-012-1258-4

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