Intelligent product search with soft-boundary preference relaxation

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摘要

This paper proposes a novel method for preference relaxation in online product search, which enables consumers to make quality choices without suffering from the commonly experienced information overload. In online shopping scenarios that involve multi-attribute choice tasks, it can be difficult for consumers to process the vast amounts of information available and to make satisfactory buying decisions. In such situations consumers are likely to eliminate potentially good choices early on, using hard-constraint filtering tools. Our approach uses edge sets to identify the alternatives on the soft boundary and the principle of alternative domination to suppress the alternatives on this boundary that are irrelevant. We demonstrate how our approach outperforms existing methods for product search in a set of simulations using two sets of 2650 car advertisements and 1813 digital cameras gathered from a popular online store.

论文关键词:NR,no relaxation,SR,standard relaxation,SBR,Soft-Boundary Preference Relaxation,SBRADD,Soft-Boundary Preference Relaxation with Addition,SBRREP,Soft-Boundary Preference Relaxation with Replacement,Decision theory,Recommender systems,Preference relaxation,Electronic commerce

论文评审过程:Available online 30 January 2012.

论文官网地址:https://doi.org/10.1016/j.eswa.2012.01.144