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Selecting appropriate sellers in online auctions through a multi-attribute reputation calculation method

机译:通过多属性信誉计算方法在在线拍卖中选择合适的卖家

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摘要

Online auctions have become immensely popular and created massive cash turnover in recent years. The volume of trade on eBay, the largest auction site in the world, reached US$6 billion in 2008. However, for a user intent on purchasing an item from an auction site, selecting an appropriate seller from the numerous choices is not an easy task. Even though most auction sites provide a concise binary reputation management mechanism to model the reputation of a trader through an integer value rating system, such a simple mechanism does not give users enough information about their potential trading partners. It is difficult to infer the right judgment rule correctly from knowledge of summing positive and negative ratings alone. We focus on developing an effective reputation model for online auctions to help users select a suitable seller. To accomplish this, four feature factors strongly related to online auction characteristics are adopted to assess the reputation of a trader. We also propose a multi-attribute reputation management (MARM) support tool to assist users in choosing sellers when using auction sites. In this research, actual transaction data collected from eBay were used to demonstrate the effectiveness of our method. Our results show that MARM is able to select more suitable sellers than other methods.
机译:近年来,在线拍卖已变得非常流行,并创造了大量现金周转。全球最大的拍卖网站eBay上的交易额在2008年达到60亿美元。但是,对于打算从拍卖网站上购买商品的用户而言,从众多选择中选择合适的卖家并非易事。 。即使大多数拍卖站点都提供了简洁的二进制信誉管理机制来通过整数值评估系统对商人的声誉进行建模,但这种简单的机制仍无法为用户提供有关其潜在贸易伙伴的足够信息。仅凭对正负评定相加的知识就很难正确地推断出正确的判断规则。我们专注于为在线拍卖开发有效的声誉模型,以帮助用户选择合适的卖家。为此,采用了与在线拍卖特征密切相关的四个特征因素来评估交易者的声誉。我们还提出了一种多属性信誉管理(MARM)支持工具,以帮助用户在使用拍卖网站时选择卖家。在这项研究中,从eBay收集的实际交易数据被用来证明我们方法的有效性。我们的结果表明,与其他方法相比,MARM能够选择更多合适的卖家。

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