Deep Learning based Market Basket Analysis using Association Rules

Hamid Ghous, Mubasher Malik, Iqra Rehman
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Abstract

Market Basket Analysis (MBA) is a data mining technique assisting retailers in determining the customer's buying habits while making new marketing decisions as the buyer's desire frequently changes with expanding needs; therefore, transactional data is getting large every day. There is a demand to implement Deep Learning (DL) methods to manipulate this rapidly growing data. In previous research, many authors conducted MBA applying DL and association rules (AR) on retail datasets. AR identifies the association between items to find in which order the customer place items in the basket. AR is only used in mining frequently purchased items from retail datasets. There is a gap in classifying these rules and predicting the next basket item using DL on the transactional dataset. This work proposes a framework using AR as a feature selection while applying DL methods for classification and prediction. The experiments were conducted on two datasets, InstaCart and real-life data from Bites Bakers, which operates as a growing store with three branches and 2233 products. The AR classified at 80,20 and 70,30 splits using CNNN, Bi- LSTM, and CNN-BiLSTM. The results considering simulation at both splits show that Bi-LSTM performs with high accuracy, around 0.92 on the InstaCart dataset. In contrast, CNN-BiLSTM performs best at an accuracy of around 0.77 on Bites Bakers dataset.
基于深度学习的关联规则购物篮分析
市场购物篮分析(Market Basket Analysis, MBA)是一种数据挖掘技术,它帮助零售商确定顾客的购买习惯,并根据顾客的需求不断变化而做出新的营销决策;因此,事务数据每天都在变大。需要实现深度学习(DL)方法来处理这些快速增长的数据。在之前的研究中,许多作者在零售数据集上应用DL和关联规则(AR)进行MBA。AR识别商品之间的关联,以查找客户在篮子中放置商品的顺序。AR仅用于从零售数据集中挖掘经常购买的物品。在对这些规则进行分类和在事务数据集上使用深度学习预测下一个购物篮项目方面存在差距。这项工作提出了一个使用AR作为特征选择的框架,同时应用DL方法进行分类和预测。实验是在两个数据集上进行的,一个是InstaCart,另一个是来自Bites Bakers的真实数据。Bites Bakers是一家正在成长的商店,拥有三家分店和2233种产品。利用cnn、Bi- LSTM和CNN-BiLSTM分别对AR进行80、20和70、30段的分类。考虑到两个分裂的模拟结果表明,Bi-LSTM在InstaCart数据集上的准确率很高,约为0.92。相比之下,CNN-BiLSTM在Bites Bakers数据集上的准确率最高,约为0.77。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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