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A Knapsack-Based Approach to Bidding in Ad Auctions

机译:基于背包的竞标方法在广告拍卖中

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We model the problem of bidding in ad auctions as a penalized multiple choice knapsack problem (PMCKP), a combination of the multiple choice knapsack problem (MCKP) and the penalized knapsack problem (PKP) [1]. We present two versions of PMCKP, GlobalPMCKP and LocalPMCKP, together with a greedy algorithm that solves the linear relaxation of a GlobalPMCKP optimally. We also develop a greedy heuristic for solving LocalPMCKP. Although our heuristic is not optimal, we show that it performs well in TAC AA games.
机译:我们将广告拍卖中的竞标问题模拟了惩罚多项选择背包问题(PMCKP),多项选择背包问题(MCKP)和惩罚的背包问题(PKP)[1]。我们将两个版本的PMCKP,GlobalPMCKP和LocalPmckp以及贪婪算法一起解决了最佳地解决了GlobalPmckp的线性松弛。我们还开发了一个贪婪的启发式,用于解决LocalPMCKP。虽然我们的启发式不是最佳的,但我们表明它在TAC AA游戏中表现良好。

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