增量解决方案的在线多单位组合拍卖的信息反馈

S. Ramanathan, A. Kasinathan, A. K. Sen
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引用次数: 1

摘要

随着通过互联网进行拍卖的便利性,电子拍卖市场正在迅速扩大。在网上(即连续的)类似ebay的组合拍卖中,竞标者可以随时加入和离开拍卖,在这个过程中,竞标者可以重复地对他们选择的物品的包装进行竞标。在这种多代理电子商务系统中,卖方必须在每次出价后就拍卖的当前状态向竞标者提供信息反馈,以帮助他们提出更明智的出价。这要求在每次投标后,通过解决中标者确定问题来计算每包物品的临时中标者。针对出价非常大的多单元在线组合拍卖,首次提出了一种动态规划方法,该方法可以在每次新出价后逐步解决每个包的中标者确定问题。针对多单元赢家确定问题,提出了两种动态规划算法。当我们的第一种算法计算并存储所有包的最优值时,一个新的出价以相反的顺序遍历包,替代算法只存储包的最优值,可以容纳到可用的内存,但可以找到每个其他包的最优解。我们讨论了算法的显著特征,并通过实验证明了我们的方法。我们还提出了一种自下而上的动态规划方法,以有效地利用内存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental solutions to online multi-unit combinatorial auctions for information feedback
With the ease of carrying out an auction through internet, the electronic auction market is expanding rapidly. In online (i.e., continuous) eBay-like combinatorial auctions, bidders are allowed to join and leave the auction at any time, and in the process, bidders can repetitively bid on packages of items of their choice. In such multi-agent e-business systems, the seller is compelled to provide information feedback to the bidders after every bid on the current state of the auction to help them place more informed bids. This requires provisional winners be computed for every package of items after each bid by solving Winner Determination Problems. In multi-unit online combinatorial auctions where the number of bids can be significantly large, the paper presents for the first time dynamic programming approaches which can incrementally solve winner determination problems for every package after each new bid. We propose two dynamic programming algorithms to solve the multi-unit winner determination problem. While our first algorithm computes and stores the optimal values for all packages on arrival of a new bid traversing the packages in a reverse order, the alternative algorithm stores the optimal values only for packages that can fit into available memory but can find out the optimal solutions for every other package. We discuss the salient features of the algorithms, and demonstrate our approach through experiments. We also propose a bottom-up approach to dynamic programming for effective use of memory.
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