Item Matching Model in E-Commerce: How Users Benefit

Olga Cherednichenko, O. Ivashchenko, Ľuboš Cibák, Marcel Lincényi
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Abstract

Abstract Research purpose. During the last decades, e-commerce sales have been rocketing, and this tendency is expected to increase over the following years. Due to the digital nature of e-commerce, one actual item can be sold on various e-commerce platforms, which leads to the exponential growth of the number of propositions. At the same time, the title and description of this item might differ. All these facts make more complicated for customers the process of searching on online platforms and change business approaches to the development of competitive strategy by e-commerce companies. The research question is how we can apply a machine learning algorithm to detect, based on the product information such as title and description, whether the items are actually relevant to the same product. Methodology. We suggest an approach that is based on a flexible textual data pipeline and the usage of a machine-learning model ensemble. Each step of the data processing is adjustable in dependence on domain issues and data features because we can achieve better results in solving the item-matching task. Findings. The item-matching model is developed. The proposed model is based on the semantic closeness of text descriptions of items and the usage of the core of keywords to present the reference item. Practical implications. We suggest an approach to improving the item searching process on different e-commerce platforms by dividing the process into two steps. The first step is searching for the related items among the set of reference items according to user preferences. The reference item description is created based on our item-matching model. The second step is surfing proposals of similar items on chosen e-commerce platforms. This approach can benefit buyers and sellers in various aspects, such as a low-price guarantee, a flexible strategy of similar products shown, and appropriate category-choosing recommendations.
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电子商务中的商品匹配模型:用户如何受益
研究目的。在过去的几十年里,电子商务销售一直在飞速增长,预计这种趋势将在接下来的几年里继续增长。由于电子商务的数字特性,一件实际物品可以在各种电子商务平台上出售,这导致了命题数量的指数级增长。同时,该项目的标题和描述可能有所不同。这些都使得客户在网络平台上的搜索过程变得更加复杂,改变了电子商务公司制定竞争战略的商业方法。研究的问题是我们如何应用机器学习算法来检测,基于产品信息,如标题和描述,这些项目是否真的与同一产品相关。方法。我们建议一种基于灵活的文本数据管道和机器学习模型集成的方法。数据处理的每一步都是可调整的,依赖于领域问题和数据特征,因为我们可以在解决项目匹配任务中取得更好的结果。发现。建立了项目匹配模型。该模型基于条目文本描述的语义紧密性和关键词核心的使用来表示参考条目。实际意义。我们提出了一种改进不同电子商务平台上的商品搜索过程的方法,将该过程分为两个步骤。第一步是根据用户的偏好在一组参考项目中搜索相关的项目。参考项目描述是基于我们的项目匹配模型创建的。第二步是在选定的电子商务平台上浏览类似商品的建议。这种方法可以使买卖双方在很多方面受益,例如低价保证,灵活的同类产品展示策略,以及适当的类别选择建议。
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