Product Recommendation System Design Using Cosine Similarity and Content-based Filtering Methods

Cut Fiarni, Herastia Maharani
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引用次数: 3

Abstract

The wide variety of products offered by a company, combined with the consistent demands of specific products from customers, create a certain problem for the organization when they want to market a new product. Organization need information that could help them promote the most suitable product based on their customer’s characteristics. The organization also need to suggest alternative products for customer if the requested product is unavailable. In this research, we design a Recommender System that could suggest either new or alternatif products to customer based on their characteristic and transaction history. This proposed system adopts Cosine Similarity method to calculate product similarity score and Content-based Filtering to calculate customer recommendation score and used as a model for the proposed system. Subsequently, these models are used to classify customers as well as products according to their transaction behavior and consequently recommends new products more likely to be purchased by them. Based on the testing results of the proposed system, it can be concluded that the chosen methods can be utilized to recommend products and costumer of products. It is shown that Precision and Recall of product similarity scores and customer recommendation for product scores are 100% and 93.47%.
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基于余弦相似度和基于内容过滤方法的产品推荐系统设计
公司提供的各种各样的产品,加上客户对特定产品的一致需求,在组织想要推销新产品时,给组织带来了一定的问题。组织需要信息,可以帮助他们根据客户的特点推广最合适的产品。如果客户无法获得所要求的产品,组织还需要向客户建议替代产品。在本研究中,我们设计了一个推荐系统,可以根据客户的特征和交易历史向客户推荐新产品或替代产品。该系统采用余弦相似度法计算产品相似度得分,采用基于内容的过滤方法计算客户推荐得分,并将其作为系统的模型。然后,根据客户的交易行为,使用这些模型对客户和产品进行分类,从而推荐更容易被他们购买的新产品。根据所提出的系统的测试结果,可以得出所选择的方法可以用来推荐产品和产品的客户。结果表明,产品相似度评分和客户推荐评分的Precision和Recall分别为100%和93.47%。
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