数据挖掘辅助购买预测

Q4 Environmental Science Iranian Journal of Botany Pub Date : 2022-04-14 DOI:10.33897/fujeas.v2i2.497
Muhammad Faseeh
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引用次数: 0

摘要

随着从实体商业到网上购物的革命,预测电子商务中的客户行为变得越来越重要。它可以通过实现更个性化的购物过程来提高客户满意度和销售额,从而产生更高的转化率。如今,大多数用户希望节省使用时间,他们更喜欢使用电子商务提供的平台进行购物。在这些网站的数据库中,有数百万的交易记录可供客户使用。使用交易来查找某些东西可能对组织或商家有帮助。利用现有的数据库或数据集,发现一些有用的模式可以增加业务,检查客户满意度水平,检查客户对产品的行为等。一些有用的信息可以是找出客户在下次访问中将购买哪些物品,或者客户在下次访问中可以购买哪些新物品。利用这些信息,一个组织或商店可以控制数量和增加最大购买项目,提高产品的质量为客户。为此,我们使用监督学习技术进行预测。因为我们使用的大部分数据都会被标记。许多研究人员使用监督方法,但也有一些研究人员使用非监督方法。我们创建了一个监督模型来预测篮子里的物品。由于数据量大,特征提取难度大,耗时长。我们进行了特征工程,以选择最好的。在训练模型之后,我们的模型表现出比之前的结果更好的性能。
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Data Mining Assisted Purchase Prediction
With the revolution from physical businesses to shopping online, predicting client behavior in e-commerce is becoming increasingly important. It can increase customer satisfaction and sales, resulting in higher conversion, by enabling a more individualized shopping process. Today, most users want to save their time using and they prefer to shop using the platform provided for e-commerce. Millions of transaction records are available in the databases of such websites using which, a customer shops something. Using the transaction to find something can be helpful for the organization or merchants. Using the available databases or datasets, to find some useful pattern can increase the business, to check out the customer satisfaction level, to check the customer behavior about the product, etc. Some of the useful information can be to find out which item will be purchased by the customer in the next visit, or which new items can be purchased by the customer in the next visit. Using this information, an organization or Shops can control the quantity and increase the maximum purchased items, improving the quality of products for the customers.     For this purpose, we use supervised learning techniques for prediction. Because most of the data which we will use will be labeled. Many researchers used supervised methods but some of the researchers also used unsupervised methods too. We created a supervised model for predicting the basket items. Due to the large dataset, it was very difficult to extract the features and it takes a lot of time. We have performed feature engineering, to choose the best ones. After the training model, our model shows better performance than the previous results. 
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来源期刊
Iranian Journal of Botany
Iranian Journal of Botany Environmental Science-Ecology
CiteScore
0.80
自引率
0.00%
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0
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