Recommendation Systems for Supermarket

Bhagampriyal M, Gowtham R, Jeril Johnson, J. F. Lilian, Suganthi P
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Abstract

Numerous recommender systems offer recommendations to users depending on their interests. Several applications including those in e-commerce, healthcare and markets have adopted recommendation systems. This paper's major goal is to demonstrate various difficulties with the methods utilized for producing suggestions. The aim is to explore and develop recommendation algorithms using past sales data. It covers the ideas behind content-based filtering, hybrid model recommendation, collaborative filtering and association rules for recommendation systems. For Product recommendation, three algorithms are used: the popularity product recommendation algorithm, the frequent pattern growth algorithm and Apriori algorithm. To increase sales and market response, the proposed recommendation model yields good recommendation outcomes. Additionally, it suggests particular products to potential clients. This paper describes the research environment for recommendation systems in grocery stores. From the observed recommendation models, Popular Product Recommendation does not require customer analysis. Among the models that compare the customer behavior, FP Growth serves better than Apriori model due to its faster execution time. This paper provided a very relevant and practical business transformation scenario that helps businesses in comparable circumstances change their business models.
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超市推荐系统
许多推荐系统根据用户的兴趣向他们提供推荐。包括电子商务、医疗保健和市场在内的一些应用已经采用了推荐系统。本文的主要目标是演示各种困难的方法用于产生建议。其目的是利用过去的销售数据探索和开发推荐算法。它涵盖了基于内容的过滤、混合模型推荐、协同过滤和推荐系统的关联规则背后的思想。对于产品推荐,使用了三种算法:流行度产品推荐算法、频繁模式增长算法和Apriori算法。为了提高销售额和市场反应,所提出的推荐模型产生了良好的推荐效果。此外,它还会向潜在客户推荐特定的产品。本文描述了杂货店推荐系统的研究环境。从观察到的推荐模型来看,流行产品推荐不需要对客户进行分析。在比较客户行为的模型中,FP Growth由于其更快的执行时间而优于Apriori模型。本文提供了一个非常相关且实用的业务转换场景,可以帮助处于可比环境中的企业更改其业务模型。
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