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Power-average-operator-based hybrid multiattribute online product recommendation model for consumer decision-making

机译:基于电源平均运算符的混合Multiattibute在线产品推荐模型,用于消费者决策

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摘要

This study develops a power-average-operator-based hybrid multiattribute online product recommendation model that considers the consumer's risk attitude to rank categoric product options as a complement to existing recommender systems. Online production recommendation plays a key role in the development of e-commerce, and can greatly improve consumers' shopping experiences. However, few online shopping sites provide interactive decision aids for consumers such that they can articulate their preferences towards multiple selection attributes with the purpose of mitigating choice difficulty and improving decision quality. Additionally, consumers' risk attitudes to online shopping dramatically impact their product choices. In the model proposed in this paper, the risk attitude-based power average (RAPA) operator is used to integrate the risk attitude of the decision-maker into the information fusion process of multiple attribute decision-making. Subsequently, the risk attitude function, with several basic types, is introduced to quantify the risk attitude of the decision-maker for use in the RAPA operator. A proportional hesitant fuzzy 2-tuple linguistic term set (PHF2TLTS) is constructed by incorporating a binary of linguistic information aiming to comprehensively analyze the hybrid product information. With a focus on the information fusion process, the proportional hesitant 2-tuple linguistic RAPA operator and weighted proportional hesitant 2-tuple linguistic RAPA operator are introduced to aggregate a given set of PHF2TLTSs. The validity of the proposed model is demonstrated using an illustrative example, a comparison with existing approaches and detailed explanations of the performance differences.
机译:本研究开发了一种基于动力平均运算符的混合多目标在线产品推荐模型,将消费者的风险态度作为对现有推荐系统的补充。在线产品推荐在电子商务的发展中发挥着关键作用,并且可以大大提高消费者的购物体验。然而,很少有网上购物网站为消费者提供互动决策辅助助剂,使得他们可以阐明他们对多种选择属性的偏好,目的是减轻选择难度和提高决策质量。此外,消费者对在线购物的风险态度显着影响其产品选择。在本文提出的模型中,基于风险态度的功率平均值(RAPA)运营商用于将决策者的风险态度集成到多个属性决策的信息融合过程中。随后,引入了具有几种基本类型的风险态度功能,以量化决策者在RAPA运营商中使用的风险态度。通过结合旨在全面分析混合产品信息的语言信息二进制,构建了比例犹豫不决的模糊2元组语言术语集合(PHF2TLT)构建。通过专注于信息融合过程,引入了比例犹豫不决的2元组语言RAPA算子和加权比例犹豫不决的2元组语言RAPA算子,以聚集一组给定的PHF2TLTS。使用说明性示例来证明所提出的模型的有效性,与现有方法的比较和性能差异的详细说明。

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