层次分析法
计算机科学
偏爱
排名(信息检索)
产品(数学)
过程(计算)
信息过载
决策辅助工具
决策支持系统
运筹学
数据挖掘
机器学习
万维网
数学
病理
操作系统
统计
替代医学
医学
几何学
作者
Peijia Ren,Bin Zhu,Long Ren,Ning Ding
标识
DOI:10.1080/01605682.2022.2129491
摘要
As online shopping flourished, consumers in their shopping can refer to rich product descriptions and a large amount of review information. For the scenario of consumer online choice decision among candidate products characterized by limited attributes, we refer to it as an online multi-attribute decision-making problem. To address the challenge of online choice decision support for consumers, we propose a data-driven analytic hierarchy process (AHP). The data-driven AHP includes extracting attributes of candidate products, calculating attribute values, attribute-weight learning, interaction-based preference revision process, and product ranking. In particular, we develop an Exp-strategy for attribute-weight learning, which helps learn the attribute weights of consumers who provide reviews as a reference for an end consumer. This learning method can handle dynamic online reviews without the problem of information overload. In addition, we design the interaction-based preference revision process to help the end consumer identify his attribute weights and make a choice decision.
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