Research on the Application of KNN Algorithm Incorporating Gaussian Functions in Precision Marketing Classification of E-commerce Platforms

IF 3.1 Q1 Mathematics
Guorui Wang
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Abstract

Abstract The technology can fully explore the user’s consumption behavior habits and help the e-commerce platform formulate more precise marketing strategies in a targeted manner. This paper firstly analyzes the optimization of marketing strategy based on the 3R marketing theory, gives the design process of the precise marketing strategy of an e-commerce platform, and analyzes the personalized service based on consumer classification. Secondly, for the shortcomings of the KNN algorithm in the process of accurate classification, the Gaussian function is introduced to weight the optimization of the algorithm, which further realizes the construction of the G-KNN algorithm. Finally, the testing and application analysis of the algorithm model was carried out using the actual user consumption data of the e-commerce platform. The results show that the classification accuracy of the G-KNN algorithm has been maintained at about 95% when the K value exceeds 800, and the F1 composite value of this paper’s algorithm fluctuates around 56% when the K value exceeds 1000. On the e-commerce platform, except for the electrical appliances category classification test, the fit and accuracy of other categories basically match. Using the KNN algorithm incorporating the Gaussian function can effectively realize the accurate classification of user characteristics on the e-commerce platform and provide data support for the e-commerce platform to formulate accurate marketing strategies based on consumer preferences.
融入高斯函数的 KNN 算法在电子商务平台精准营销分类中的应用研究
该技术可以充分挖掘用户的消费行为习惯,帮助电商平台有针对性地制定更精准的营销策略。本文首先分析了基于3R营销理论的营销策略优化,给出了电子商务平台精准营销策略的设计过程,并对基于消费者分类的个性化服务进行了分析。其次,针对KNN算法在精确分类过程中存在的不足,引入高斯函数对算法的优化进行加权,进一步实现了G-KNN算法的构建。最后,利用电子商务平台的实际用户消费数据,对算法模型进行了测试和应用分析。结果表明,当K值超过800时,G-KNN算法的分类准确率一直保持在95%左右,当K值超过1000时,本文算法的F1复合值在56%左右波动。在电商平台上,除电器品类分类测试外,其他品类的契合度和准确率基本匹配。利用结合高斯函数的KNN算法,可以有效地实现对电商平台用户特征的准确分类,为电商平台根据消费者偏好制定精准的营销策略提供数据支持。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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