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Product Recommendation System for Supermarket

机译:超市产品推荐系统

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摘要

Customers who seek the services at supermarkets are subjected to inconsistencies & ambiguities over choosing their desired products from a wide range of products with the closest quality. Meanwhile, supermarkets find it very difficult to satiate the customers’ demand. Therefore, proposing a method to analyze the customers’ need plays an important role in attracting new and regular customers. The purpose of this study is to formulate a product recommendation system which analyze customers’ needs and thus recommend the best products. This system recommends products to the regular customers and to the new customers as well. New customers mean obviously the customers with no purchasing history at the supermarket in question. The system referred to recommends the products to the new customers using up two methods. One method recommends the most popular products while the other method solely focuses on the product description for recommendation. The system recommends the products to the regular customers using up user-based collaborative filtering, item based collaborative filtering and association rule mining. It recommends products to regular customers based on purchasing history and priority ratings given by other users who bought the products. Initially, the recommendation algorithm finds a set of customers who purchased and rated the products that overlap with the user who purchased and rated the products. The algorithm aggregates products from the customers with similar preference and eliminates the products the user has already purchased or rated. The proposed methodology improves the shopping experience of customers by recommending accurately and efficiently the products that are personalized to the need of the customers.
机译:寻求超市服务的客户受到不一致和含糊不清的,这些产品从各种产品中选择所需的产品。与此同时,超市发现很难满足客户的需求。因此,提出分析客户需求的方法在吸引新的和普通客户方面发挥着重要作用。本研究的目的是制定分析客户需求的产品推荐系统,并因此推荐最佳产品。该系统也建议产品到普通客户和新客户。新客户明显意思是客户在超市没有购买历史的客户。该系统将产品推荐给新客户使用两种方法。一种方法推荐最流行的产品,而另一个方法专注于推荐产品描述。该系统建议产品使用基于用户的协作过滤,基于项目的协作过滤和关联规则挖掘的常规客户。它推荐产品以根据购买产品的其他用户给出的购买历史和优先评级,以普通客户提供普通客户。最初,推荐算法找到了一套购买并评定与购买和评级产品的用户重叠的产品的客户。该算法通过相似的偏好从客户聚合产品,并消除了用户已经购买或评级的产品。拟议的方法通过准确,有效地推荐为客户提供个性化的产品来提高客户的购物体验。

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