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A novel product recommendation model consolidating price, trust and online reviews

机译:一种新产品推荐模式巩固价格,信任和在线评论

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摘要

Purpose The purpose of this paper is to propose a model for product recommendation to improve the accuracy of recommendation based on the current search engines used in e-commerce platforms like Tmall.com. Design/methodology/approach First, the proposed model comprehensively considers price, trust and online reviews, which all represent critical factors in consumers' purchasing decisions. Second, the model introduces the quantization methods for these criteria incorporating fuzzy theory. Third, the model uses a distance measure between two single valued neutrosophic sets based on the prioritized average operator to consolidate the influences of positive, neutral and negative comments. Finally, the model uses multi-criteria decision-making methods to integrate the influences of price, trust and online reviews on purchasing decisions to generate recommendations. Findings To demonstrate the feasibility and efficiency of the proposed model, a case study is conducted based on Tmall.com. The results of case study indicate that the recommendations of our model perform better than those of current search engines of Tmall.com. The proposed model can significantly improve the accuracy of product recommendations based on search engines. Originality/value The product recommendation method can meet the critical challenge from the search engines on e-commerce platforms. In addition, the proposed method could be used in practice to develop a new application for e-commerce platforms.
机译:目的本文的目的是提出产品建议的模型,以提高基于电子商务平台的当前搜索引擎的推荐准确性,如Tmall.com。设计/方法/方法首先,拟议模型全面考虑价格,信任和在线评论,这一切都代表了消费者采购决策的关键因素。其次,该模型介绍了包含模糊理论的这些标准的量化方法。第三,该模型基于优先级平均运营商在两个单个值中性学型集之间使用距离测量,以巩固积极,中性和负面评论的影响。最后,该模型使用多标准决策方法来整合价格,信任和在线评论对购买决策的影响,以产生建议。调查结果以证明所提出的模型的可行性和效率,案例研究是基于Tmall.com进行的。案例研究结果表明,我们模型的建议比Tmall.com的当前搜索引擎更好。所提出的模型可以根据搜索引擎显着提高产品建议的准确性。原创性/值产品推荐方法可以满足电子商务平台上的搜索引擎的危急挑战。此外,可以在实践中使用该方法以开发新的电子商务平台的新应用。

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