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Item-Based Collaborative Filtering and Association Rules for a Baseline Recommender in E-Commerce

机译:基于项目的电子商务基准额度的合作过滤和关联规则

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In the ever-growing data-driven world today, data increases in many forms, e.g. e-commerce sites uploading new products, streaming services adding TV shows and movies, and music platforms uploading new songs. It would be highly infeasible for end users to quickly browse all this data. Hence recommender systems can benefit end users (individuals as well as companies) in efficiently finding suitable products. Rather than making end users search through a vast array of items, recommender systems can suggest suitable items to users based on popularity of the items and the respective users’ buying behavior. Accordingly, in this paper we explore two techniques widespread in recommender systems, i.e. item-based collaborative filtering and association rule mining, over Amazon review data on cellphones and accessories, and build a baseline recommender system scalable to larger data. Association rule mining is explored using the Apriori algorithm to find patterns in the data from transaction history. Item-based collaborative filtering is deployed using a correlation matrix to find similar products. Both these techniques yield useful results as evident from our baseline experiments. This work constitutes an exploratory study with longtime products in e-commerce and sets the stage for mining online data on relatively new products pertinent to the Covid-19 pandemic. These include face masks, hand sanitizers, disinfectant sprays, antibacterial wipes etc. Since multiple vendors are designing such crucial products today, it is important to provide recommendations to potential buyers. An ultimate goal in our work is to build a recommender app for e-commerce based on interesting results from our findings. This work constitutes intelligent data mining scalable over big data in e-commerce. It makes broader impacts on smart cities, since this fits the smart living and smart economy characteristics.
机译:在今天不断增长的数据驱动世界中,数据增加了多种形式,例如,电子商务网站上传新产品,流媒体服务添加电视节目和电影,以及上传新歌曲的音乐平台。最终用户可以快速浏览所有这些数据是非常不可行的。因此,重新建议系统可以有效地找到合适的产品中获益最终用户(个人和公司)。而不是通过大量项目进行最终用户搜索,推荐系统可以根据物品的普及和相应的用户的购买行为向用户建议合适的项目。因此,在本文中,我们探讨了推荐系统中的两种技术,即基于项目的协作过滤和关联规则挖掘,在亚马逊在蜂窝和附件上查看数据,并构建可扩展到更大数据的基线推荐系统。使用APRIORI算法探索关联规则挖掘以查找来自事务历史记录中数据的模式。使用相关矩阵来部署基于项目的协同滤波,以查找类似产品。这两种技术都从我们的基线实验中产生了有用的结果。这项工作构成了在电子商务中的长期产品探索性研究,并在与Covid-19大流行相关的相对较新的产品上设立挖掘在线数据的阶段。这些包括面部面罩,手动消毒剂,消毒剂喷雾剂,抗菌湿巾等,因为多个供应商今天正在设计这种关键产品,重要的是向潜在买家提供建议。我们的工作中的最终目标是根据我们的调查结果的有趣结果为电子商务建立推荐人。这项工作构成了智能数据挖掘在电子商务中的大数据上可扩展。它对智能城市产生了更大的影响,因为这适合聪明的生活和智能经济特征。

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