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ReputationPro: The Efficient Approaches to Contextual Transaction Trust Computation in E-Commerce Environments

机译:声望专业:电子商务环境中上下文事务信任计算的有效方法

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摘要

In e-commerce environments, the trustworthiness of a seller is utterly important to potential buyers, especially when a seller is not known to them. Most existing trust evaluation models compute a single value to reflect the general trustworthiness of a seller without taking any transaction context information into account. With such a result as the indication of reputation, a buyer may be easily deceived by a malicious seller in a transaction where the notorious value imbalance problem is involved—in other words, a malicious seller accumulates a high-level reputation by selling cheap products and then deceives buyers by inducing them to purchase more expensive products.In this article, we first present a trust vector consisting of three values for contextual transaction trust (CTT). In the computation of CTT values, three identified important context dimensions, including Product Category, Transaction Amount, and Transaction Time, are taken into account. In the meantime, the computation of each CTT value is based on both past transactions and the forthcoming transaction. In particular, with different parameters specified by a buyer regarding context dimensions, different sets of CTT values can be calculated. As a result, all of these trust values can outline the reputation profile of a seller that indicates the dynamic trustworthiness of a seller in different products, product categories, price ranges, time periods, and any necessary combination of them. We name this new model ReputationPro. Nevertheless, in ReputationPro, the computation of reputation profile requires new data structures for appropriately indexing the precomputation of aggregates over large-scale ratings and transaction data in three context dimensions, as well as novel algorithms for promptly answering buyers’ CTT queries. In addition, storing precomputed aggregation results consumes a large volume of space, particularly for a system with millions of sellers. Therefore, reducing storage space for aggregation results is also a great demand.To solve these challenging problems, we first propose a new index scheme CMK-tree by extending the two-dimensional K-D-B-tree that indexes spatial data to support efficient computation of CTT values. Then, we further extend the CMK-tree and propose a CMK-treeRS approach to reducing the storage space allocated to each seller. The two approaches are not only applicable to three context dimensions that are either linear or hierarchical but also take into account the characteristics of the transaction-time model—that is, transaction data is inserted in chronological order. Moreover, the proposed data structures can index each specific product traded in a time period to compute the trustworthiness of a seller in selling a product. Finally, the experimental results illustrate that the CMK-tree is superior in efficiency of computing CTT values to all three existing approaches in the literature. In particular, while answering a buyer’s CTT queries for each brand-based product category, the CMK-tree has almost linear query performance. In addition, with significantly reduced storage space, the CMK-treeRS approach can further improve the efficiency in computing CTT values. Therefore, our proposed ReputationPro model is scalable to large-scale e-commerce Web sites in terms of efficiency and storage space consumption.
机译:在电子商务环境中,卖方的可信赖性对潜在买方至关重要,尤其是在卖方不为他们所知的情况下。大多数现有的信任评估模型都会计算单个值,以反映卖方的总体信任度,而无需考虑任何交易上下文信息。由于存在这样的结果,即表明声誉,在涉及臭名昭著的价值失衡问题的交易中,购买者可能容易被恶意卖方欺骗,换句话说,恶意卖方通过出售廉价产品而积累了很高的声誉,并且然后通过诱使他们购买更昂贵的产品来欺骗购买者。在本文中,我们首先提出了一个信任向量,该向量由上下文交易信任(CTT)的三个值组成。在计算CTT值时,考虑了三个确定的重要上下文维度,包括产品类别,交易金额和交易时间。同时,每个CTT值的计算都基于过去的交易和即将发生的交易。特别地,利用买方针对上下文尺寸指定的不同参数,可以计算出不同的CTT值集。结果,所有这些信任值都可以勾勒出卖方的信誉概况,从而表明卖方在不同产品,产品类别,价格范围,时间段以及它们的任何必要组合中的动态可信度。我们将此新模型命名为声望Pro。尽管如此,在信誉管理器中,信誉配置文件的计算需要新的数据结构,以便在三个上下文维度中适当地索引大型评级和交易数据中的聚合的预计算,以及新颖的算法来及时回答买家的CTT查询。此外,存储预先计算的聚合结果会占用大量空间,尤其是对于具有数百万个卖家的系统而言。因此,减少聚合结果的存储空间也是一个巨大的需求。为解决这些难题,我们首先提出一种新的索引方案CMK-tree,方法是扩展对空间数据进行索引的二维KDB-tree,以支持CTT值的有效计算。 。然后,我们进一步扩展CMK-tree并提出CMK-treeRS方法以减少分配给每个卖方的存储空间。这两种方法不仅适用于线性或分层的三个上下文维度,而且还考虑了事务时间模型的特征,即事务数据按时间顺序插入。此外,所提出的数据结构可以索引在一段时间内交易的每个特定产品,以计算卖方在销售产品中的可信赖性。最后,实验结果表明,CMK树在计算CTT值的效率方面优于文献中的所有三种现有方法。特别是,在回答针对每个基于品牌产品类别的买方的CTT查询时,CMK树几乎具有线性查询性能。另外,在大大减少存储空间的情况下,CMK-treeRS方法可以进一步提高计算CTT值的效率。因此,在效率和存储空间消耗方面,我们提出的声望Pro模型可以扩展到大型电子商务网站。

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