信任与电子商务中的社交网络学习

Tzu-Yu Chuang
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引用次数: 13

摘要

互联网用户之间的信任以及社交网络在电子商务和其他互联网应用中发挥着重要作用。然而,关于信任的精确数学模型及其在电子商务系统中的应用还没有令人满意地建立起来。本文提出了一个概率论框架,将信任作为数学推理进行定量度量,并基于信任度量对电子商务系统中消费者和卖家的行为进行建模。我们首先总结了互联网用户及其社交网络的信任属性。然后构造了电子商务系统的拓扑结构,并运用统计推理推导出更可靠的信任测度。因此,提出了一种可靠的算法,该算法对卖家的恶意行为具有鲁棒性。通过社交网络学习,提出分布式决策,以保持信任估计的准确性,并更好地抵御潜在的恶意行为。仿真结果表明,该方案在估计置信水平方面具有良好的准确性,并且在面对电子商务系统中大量恶意用户的情况下仍能保持稳健的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trust with Social Network Learning in E-Commerce
Trust among Internet users and thus social networks plays an important role in e-commerce and other Internet applications. However, the precise mathematical model of trust and thus applications based on trust in e-commerce system has not been satisfactorily established yet. In this paper, we present a probability theoretic framework to quantitatively measure trust as mathematical reasoning and to model the behaviors of consumers and sellers in the e-commerce system based on trust measure. We first summarize properties of trust in Internet users and their social networking. Then we construct the topology of e-commerce system and apply the statistical inference to derive more reliable trust measure. A reliable algorithm, which is robust to malicious behaviors of the sellers, is therefore developed. Via social network learning, distributed decision is proposed to maintain the accuracy of trust estimation and to better against potential malicious behaviors. Simulations demonstrate that our proposed scheme shows good accuracy in estimation of confidence level and retains robust performance facing a number of malicious users in the e-commerce system.
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