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Personalizing Trust in Online Auctions

机译:在线拍卖中的个性化信任

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The amount of business taking place in online marketplaces such aseBay is growing rapidly. At the end of 2005 eBay Inc. reported annual growth rates of 42.5percent [3] and in February 2006 received 3 million user feedback comments per day [1]. Now we are faced with the task of using the limited information provided on auction sites to transact with complete strangers with whom we will most likely only interact with once. People will naturally be comfortable with old fashioned "corner store" business practice [14], based on a person to person trust which is lacking in large-scale electronic marketplaces such as eBay and Amazon.com. We analyse reasons why the current feedback scores on eBay and most other online auctions are too positive. We introduce AuctionRules, a trust-mining algorithm which captures subtle indications of negativity from user comments in cases where users have rated a sale as positive but still voiced some grievance in their feedback. We explain how these new trust values can be propagated using a graph-representation of the eBay marketplace to provide personalized trust values for both parties in a potential transaction. Our experimental results show that AuctionRules beats seven benchmark algorithms by up to 21percent, achieving up to 97.5percent accuracy, with a false negative rate of 0percent in comment classification tests compared with up to 8.5percent from other algorithms tested.
机译:在线市场上发生的业务金额在线市场,此类ASEBAY正在迅速增长。 2005年底EBay Inc.报告的年度增长率为42.5%[3],2006年2月收到每天300万用户反馈意见[1]。现在我们面临着使用拍卖网站上提供的有限信息的任务,以与我们最有可能只与之互动的完全陌生人。人们自然会对古老的“角落商店”的商业惯例[14],基于一个人的信任,这是一个缺乏大规模电子市场,如eBay和Amazon.com。我们分析了当前反馈分数在eBay和大多数其他在线拍卖的原因太为积极。我们介绍了一种信任挖掘算法,该算法捕获来自用户评论的微妙挖掘迹象,因为用户评价为积极的销售,但仍然在反馈中表达一些申诉。我们解释了如何使用eBay市场的图形表示传播这些新的信任值,为潜在交易中的双方提供个性化信任值。我们的实验结果表明,AuctionRules通过最多21个基准算法击败了七个基准算法,实现了高达97.5%的精度,在评论分类测试中具有假负率,而来自其他算法的最高可见。

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