An Intelligent Exploratory Approach for Product Recommendation Using Collaborative Filtering

N. Santhosh, Jo Cheriyan, M. Sindhu
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引用次数: 2

Abstract

Recommendation systems (RS) have become a hot topic in the study, intending to assist consumers in finding goods online by offering choices that closely match their interests. Recommending a product to customers exclusively based on a quantitative review may result in the recommendation of a product that is irrelevant. Various recommendation algorithms are used by online e-commerce companies like Amazon and Flipkart to offer different choices to different customers. Amazon now uses item-to-item collaborative filtering, which expands to enormous data sets and produces high-quality real-time suggestions. This type of filtering compares the users purchased and rated items to similar things, the results are then compiled into a user-friendly list of recommendations. The goal of this research is to create a product suggestion system for an e-commerce platform that is tailored to the preferences of customers. Collaborative Filtering is one of the methods for generating suggestions. Recommend products to consumers based on their previous purchases and the ratings left by other customers who purchased comparable things. This paper discusses a model-based collaborative filtering approach, which assists in the development of predictive items for a specific user by recognizing patterns based on preferences gleaned from various user data.
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一种基于协同过滤的产品推荐智能探索方法
推荐系统(RS)已成为研究中的热门话题,旨在通过提供与消费者兴趣密切相关的选择,帮助消费者在网上找到商品。仅根据定量评价向客户推荐产品可能会导致推荐不相关的产品。亚马逊和Flipkart等在线电子商务公司使用各种推荐算法,为不同的客户提供不同的选择。亚马逊现在使用商品到商品的协同过滤,扩展到庞大的数据集,并产生高质量的实时建议。这种类型的过滤将用户购买和评级的商品与类似的商品进行比较,然后将结果编译成用户友好的推荐列表。本研究的目标是为电子商务平台创建一个适合客户偏好的产品建议系统。协同过滤是生成建议的方法之一。根据消费者之前的购买行为和其他购买类似商品的顾客留下的评价向他们推荐产品。本文讨论了一种基于模型的协同过滤方法,该方法通过识别基于从各种用户数据中收集的偏好的模式,帮助开发针对特定用户的预测项。
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