E-commerce Product Recommendation Based on Product Specification and Similarity

Sourabh Jain, P. Hegade
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引用次数: 4

Abstract

Recommender systems play the role of leading users to customized suggestions in the broad universe of available possibilities. While producers use it for cross-selling, which suggests additional products or services to customers, consumers use recommender systems to seek items that match their interests and preferences. By establishing a value-added relationship between the system and the customer, recommender systems boost loyalty. In present e-commerce systems, user pattern search, item, and historical analysis is a substantial component of a recommendation system. A better recommendation system based on product specifications and product similarity measures rather than historical data could lead to a progressive change in e-commerce recommendation technologies. This paper proposes a model that uses product specifications and various similarity measures to compute the user recommendations. The model considers product description and specifications to calculate a similarity measure and then uses these similarity values to form clusters of products. Based on the generated cluster of products, relevant products are recommended to the user. The paper presents method analysis of the various measures and matrices using a sample data set. It also compares the results of our model with the traditionally followed model. The proposed methodology promises to build a user-friendly recommendation system.
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基于产品规格和相似度的电子商务产品推荐
推荐系统的作用是引导用户在广泛的可用可能性中定制建议。生产商使用它进行交叉销售,向顾客推荐额外的产品或服务,而消费者则使用推荐系统寻找符合他们兴趣和偏好的商品。通过在系统和顾客之间建立一种增值关系,推荐系统提高了顾客的忠诚度。在当前的电子商务系统中,用户模式搜索、商品和历史分析是推荐系统的重要组成部分。一个基于产品规格和产品相似度度量而不是历史数据的更好的推荐系统可能会导致电子商务推荐技术的逐步变化。本文提出了一个使用产品规格和各种相似度度量来计算用户推荐的模型。该模型考虑产品描述和规格来计算相似度量,然后使用这些相似值来形成产品簇。根据生成的产品集群,向用户推荐相关的产品。本文用一个样本数据集对各种度量和矩阵进行了方法分析。它还将我们的模型的结果与传统遵循的模型进行了比较。所提出的方法有望构建一个用户友好的推荐系统。
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