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Low-Regret Algorithms for Strategic Buyers with Unknown Valuations in Repeated Posted-Price Auctions

机译:战略买家的低遗憾算法,估值未知的估值在重复的发布价格拍卖中

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We study repeated posted-price auctions where a single seller repeatedly interacts with a single buyer for a number of rounds. In previous works, it is common to consider that the buyer knows his own valuation with certainty. However, in many practical situations, the buyer may have a stochastic valuation. In this paper, we study repeated posted-price auctions from the perspective of a utility maximizing buyer who does not know the probability distribution of his valuation and only observes a sample from the valuation distribution after he purchases the item. We first consider non-strategic buyers and derive algorithms with sub-linear regret bounds that hold irrespective of the observed prices offered by the seller. These algorithms are then adapted into algorithms with similar guarantees for strategic buyers. We provide a theoretical analysis of our proposed algorithms and support our findings with numerical experiments. Our experiments show that, if the seller uses a low-regret algorithm for selecting the price, then strategic buyers can obtain much higher utilities compared to non-strategic buyers. Only when the prices of the seller are not related to the choices of the buyer, it is not beneficial to be strategic, but strategic buyers can still attain utilities of about 75% of the utility of non-strategic buyers.
机译:我们研究了重复的发布价格拍卖,单个卖方反复与单个买家交互以获取许多轮次。在以前的作品中,很常见的是,买方以确定性知道自己的估值。然而,在许多实际情况下,买方可能具有随机估值。在本文中,我们将重复的发布价格拍卖从不了解他估值的概率分布,并仅在购买该项目后观察估值分配的样本。我们首先考虑非战略性买家,与子线性后悔界定的算法,无论卖方所提供的指示。然后,这些算法适用于具有类似保证的战略买家的算法。我们为我们所提出的算法提供了一个理论分析,并通过数值实验支持我们的研究结果。我们的实验表明,如果卖方使用低遗憾的算法来选择价格,那么与非战略买家相比,战略买家可以获得更高的公用事业。只有当卖方的价格与买方的选择无关时,才有利于战略性,但战略买家仍可达到非战略买家效用的公用事业约75%。

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