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Pricing a Low-regret Seller

机译:定价低遗憾的卖家

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摘要

As the number of ad exchanges has grown, publishers have turned to low regret learning algorithms to decide which exchange offers the best price for their inventory. This in turn opens the following question for the exchange: how to set prices to attract as many sellers as possible and maximize revenue. In this work we formulate this precisely as a learning problem, and present algorithms showing that by simply knowing that the counterparty is using a low regret algorithm is enough for the exchange to have its own low regret learning algorithm to find the optimal price.
机译:随着广告交易所的数量已经发展,出版商已经转向低遗憾的学习算法,以确定哪个交换为其库存提供最优惠的价格。这反过来打开了交换的以下问题:如何确定价格以尽可能多的卖家,最大限度地提高收入。在这项工作中,我们精确地作为学习问题制定,并且目前的算法表明,通过简单地知道交易对手使用低遗憾算法足以让交换具有其自己的低遗憾学习算法来找到最佳价格。

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