基于Beta分布函数的评级聚合信誉模型

Y. Liu, Usman Shittu Chitawa, G. Guo, Xingwei Wang, Zhenhua Tan, Shuang Wang
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引用次数: 8

摘要

随着金融技术(Fintech)的快速发展,现代电子营销典型地部署了万维网的使用。这带来了巨大的挑战,特别是在决策方面,以及在容易受到高风险和威胁的开放环境中开展新产品和服务的前期工作方面。为了在网上交易中减少这些风险和威胁,建立卖家声誉和买卖双方之间的信任的巨大需求催生了声誉系统的想法。信誉系统的出现吸引了许多研究者提出了基于简单均值和正态分布的评价聚合方法。然而,现有的方法在某些情况下不能准确地产生信誉评分。因此,本文提出了一个新的模型,旨在产生更准确和有效的信誉评分。我们的模型采用标准的beta分布,考虑接收到的评级分布,从而生成每个评级的权重,然后导出评级的级别权重。最终的声誉分数是评级等级的等级加权集合。该模型的创新之处在于不直接将评级汇总为声誉得分,而是将其作为评估每个评级水平的样本。通过实例分析,该模型达到了预期的精度和有效性,甚至优于现有模型。
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A Reputation Model for Aggregating Ratings based on Beta Distribution Function
With the speed growth of financial technology (Fintech), modern electronic marketing has typically deployed the use of the World Wide Web. This has come with great challenges especially in decision making and in engaging the pre-tail for launching new products and services in an open environment susceptible to high risks and threats. A prodigious need to build a sellers reputation and trust between the seller and the buyer so as to diminish such risks and threats in online trading birthed the idea of reputation systems. The emergence of reputation systems has attracted a lot of researchers to propose rating aggregation methods such as simple mean and normal distribution based method. However, the existing methods cannot accurately produce reputation score in some cases. Hence, this paper proposes a new model aiming to producing even more accurate and effective reputation score. Our model uses the standard beta-distribution considering the received rating distribution, so as to generate the weights of each ratings and then derive the level weights of ratings. The final reputation score is the level weighted aggregation of the rating levels. The proposed model is innovative in the aspect that the ratings are not directly aggregated to the reputation score, but are treated as the samples in evaluating each respective rating levels. Through case studies, the model is demonstrated to achieve desired accuracy and effectiveness, and even performs better than the existing models.
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