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Envy-Free Pricing in Large Markets: Approximating Revenue and Welfare

机译:大型市场中令人羡慕的定价:估计收入和福利

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We study the classic setting of envy-free pricing, in which a single seller chooses prices for its many items, with the goal of maximizing revenue once the items are allocated. Despite the large body of work addressing such settings, most versions of this problem have resisted good approximation factors for maximizing revenue; this is true even for the classic unit-demand case. In this paper, we study envy-free pricing with unit-demand buyers, but unlike previous work we focus on large markets: ones in which the demand of each buyer is infmitesimally small compared to the size of the overall market. We assume that the buyer valuations for the items they desire have a nice (although reasonable) structure, i.e.. that the aggregate buyer demand has a monotone hazard rate and that the values of every buyer type come from the same support. For such large markets, our main contribution is a 1.88 approximation algorithm for maximizing revenue, showing that good pricing schemes can be computed when the number of buyers is large. We also give a (e, 2)-bicriteria algorithm that simultaneously approximates both maximum revenue and welfare, thus showing that it is possible to obtain both good revenue and welfare at the same time. We further generalize our results by relaxing some of our assumptions, and quantify the necessary tradeoffs between revenue and welfare in our setting. Our results are the first known approximations for large markets, and crucially rely on new lower bounds which we prove for the profit-maximizing solutions.
机译:我们研究了无羡慕定价的经典设置,在该设置中,单个卖家为其许多商品选择价格,其目的是在商品分配后使收入最大化。尽管解决此类设置的工作量很大,但大多数版本的此问题都无法很好地逼近最大化收入的因素。即使对于经典的按需案例也是如此。在本文中,我们研究了对按需购买者的无羡慕定价,但与以前的工作不同,我们关注的是大型市场:与整体市场规模相比,每个购买者的需求极小。我们假设买方对所需物品的估价具有良好(尽管合理)的结构,即买方总需求具有单调危害率,并且每种买方类型的价值都来自相同的支持。对于这样的大型市场,我们的主要贡献是使收入最大化的1.88近似算法,表明当购买者数量很大时,可以计算出好的定价方案。我们还给出了(e,2)-二项式算法,该算法同时近似最大收入和福利,因此表明可以同时获得良好的收入和福利。我们通过放宽一些假设来进一步概括我们的结果,并在我们的环境中量化收入与福利之间的必要权衡。我们的结果是针对大型市场的第一个已知近似值,并且至关重要地依赖于我们为获利最大化解决方案所证明的新的下界。

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