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Modelling Search Habits on E-commerce Websites using Supervised Learning

机译:使用受监督学习的电子商务网站建模搜索习惯

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Consumers are going through a huge transition in terms of their choices as well as the propensity to spend. People increasingly travel outside the country and understand the spectrum of products or services available in other countries. This has given a huge impetus to E-commerce companies and start-ups offering a variety of products and services. The continuous development of E-commerce platforms and the convenience of purchasing goods and services has increased the customer base continuously. The broad objective of the study is to extract information from consumer searches and use it analytically for driving the business in the future. The purpose of the research is to use supervised classification techniques to categorize product related search queries into category (level 1) and subcategory (level 2), which is further required to derive shopping patterns and trends among the consumers. In this paper, we explore the various multiclass classification techniques, like Na?ve Bayes, Random Forests, and SVM. The Na?ve Bayes classification at the category (level 1) and subcategory (level 2) outperformed the other algorithms to achieve maximum accuracy of the search query classification.
机译:消费者在其选择方面正在经历巨大的过渡,以及花费的倾向。人们越来越多地在国外旅行,了解其他国家/地区的产品或服务的频谱。这对电子商务公司和初创企业提供了各种产品和服务的巨大推动力。电子商务平台的不断发展以及购买商品和服务的便利性持续增加了客户群。该研究的广泛目标是从消费者搜索中提取信息,并在将来分析推动业务。该研究的目的是使用监督分类技术来将产品相关的搜索查询分类为类别(级别1)和子类别(级别2),这进一步需要导出消费者之间的购物模式和趋势。在本文中,我们探讨了各种多种多组分类技术,如Na've Bayes,随机林和SVM。 Na ve贝雷斯在类别(1级)和子类别(级别2)上的分类优于其他算法,以实现搜索查询分类的最大准确性。

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