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Learning Best Response Strategies for Agents in Ad Exchanges

机译:学习广告交流中代理商的最佳反应策略

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Ad exchanges are widely used in platforms for online display advertising. Autonomous agents operating in these exchanges must learn policies for interacting profitably with a diverse, continually changing, but unknown market. We consider this problem from the perspective of a publisher, strategically interacting with an advertiser through a posted price mechanism. The learning problem for this agent is made difficult by the fact that information is censored, i.e., the publisher knows if an impression is sold but no other quantitative information. We address this problem using the Harsanyi-Bellman Ad Hoc Coordination (HBA) algorithm [1,3], which conceptualises this interaction in terms of a Stochastic Bayesian Game and arrives at optimal actions by best responding with respect to probabilistic beliefs maintained over a candidate set of opponent behaviour profiles. We adapt and apply HBA to the censored information setting of ad exchanges. Also, addressing the case of stochastic opponents, we devise a strategy based on a Kaplan-Meier estimator for opponent modelling. We evaluate the proposed method using simulations wherein we show that HBA-KM achieves substantially better competitive ratio and lower variance of return than baselines, including a Q-learning agent and a UCB-based online learning agent, and comparable to the offline optimal algorithm.
机译:广告交换广泛用于在线显示广告的平台上。在这些交换机中运营的自治代理必须学习有利于多元化,不断变化但未知的市场互动互动的政策。从出版商的角度来看,我们考虑了这个问题,通过发布的价格机制与广告商进行战略性地互动。这种代理的学习问题是困难的,即审查了信息,即,出版商如果出售的印象,但没有其他定量信息。我们使用Harsanyi-Bellman Ad Hoc协调(HBA)算法[1,3]来解决这个问题,这概念了这种互动,即在随机贝叶斯游戏方面,通过对候选人维护的概率信仰最佳回应来实现最佳行为一套对手行为概况。我们适应并将HBA应用于广告交易所的审查信息设置。此外,解决随机对手的案例,我们根据KAPlan-Meier估算器设计了一种对对手建模的策略。我们使用模拟评估所提出的方法,其中我们表明HBA-Km实现了基本更好的竞争比率和比基础的返回方差更低,包括Q学习代理和基于UCB的在线学习代理,以及与离线最佳算法相当。

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