Analyzing the performance of multiple agents with varying bidding behaviors and standard bidders in online auctions

Jacob Sow, P. Anthony, Chong Mun Ho
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引用次数: 3

Abstract

Online auctions have provided an alternative trading method to exchange items without the geographical and time constraints. However, buyers would face difficulties in searching, monitoring, and selecting an auction to participate in. As a consequence, agent technology is introduced to overcome these pitfalls. In this paper, heterogeneous intelligent agents and heterogeneous standard bidders are generated in a simulated auction market and their performances are measured. By doing so, it would further simulate the real online auction marketplace where bidders may have different bidding behaviors or implement different bidder agents. From the simulated results, the average winner's utility, the average number of winning auctions, the average closing price and the average median consumer surplus ratio are used to evaluate the winners' performances. From the results obtained, it is generalized that by using intelligent bidder agents to participate in online auctions, it benefits the bidders. Besides that, market economy is reviewed based on the results obtained.
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分析不同竞价行为的多代理和标准竞价人在网络拍卖中的表现
网上拍卖提供了一种不受地域和时间限制的交换物品的替代交易方法。然而,买家在搜索、监控和选择参与拍卖方面将面临困难。因此,引入了代理技术来克服这些缺陷。本文在模拟拍卖市场中生成了异构智能代理和异构标准投标人,并对其性能进行了度量。通过这样做,可以进一步模拟真实的网上拍卖市场,竞标者可能有不同的投标行为或实施不同的竞标者代理。根据模拟结果,采用平均中标者效用、平均中标次数、平均收盘价和平均消费者剩余比中位数来评价中标者的绩效。结果表明,采用智能竞价代理参与在线拍卖,有利于竞价方的利益。在此基础上,对市场经济进行了评述。
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