Research on a User Context Model Based on Data Mining

Jinhai Li, Lihang Ling, Yue Wu
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引用次数: 0

Abstract

With the popularity of the Internet and under the rising number of online shoppers, e-commerce platforms are facing increasing challenges in personalizing their descriptions and information services to users. Therefore, in this paper, the context factors that have an impact on users' decisions are counted through questionnaires and derived by way of statistical analysis. Based on the coarse-grained context conclusions drawn from the statistical analysis through SPSS, a web crawler was used to crawl the Taobao users' context and behavioral dataset as the experimental dataset. The crawled data was then analyzed by K-Means. Finally, the K-Means clustering model analysis is used to propose the construction of a user context model, which is used to promote the correct understanding of personalized information needs on the platform, thereby increasing user loyalty.
基于数据挖掘的用户上下文模型研究
随着互联网的普及和网上购物者数量的增加,电子商务平台在向用户提供个性化描述和信息服务方面面临着越来越大的挑战。因此,本文通过问卷调查的方式对影响用户决策的语境因素进行统计,并通过统计分析的方式得出。基于SPSS统计分析得出的粗粒度上下文结论,使用网络爬虫抓取淘宝用户的上下文和行为数据集作为实验数据集。然后用K-Means对抓取的数据进行分析。最后,利用K-Means聚类模型分析,提出构建用户语境模型,用于促进平台对个性化信息需求的正确理解,从而提高用户忠诚度。
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