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Precise Marketing of E-Commerce Products Based on KNN Algorithm

机译:基于KNN算法的电商产品精准营销

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摘要

In order to better understand the purchase decision-making process of consumers, this paper makes an in-depth study on the precision marketing of e-commerce products on the basis of KNN algorithm. Through data mining, classic KNN algorithm, BPNN algorithm, and other methods, this paper takes the price and purchase intention of e-commerce agricultural products as an example. Based on the classic nearest neighbor algorithm, binomial function is combined with Euclidean distance formula when calculating the nearest neighbor through similarity. The particle swarm optimization algorithm is used to optimize the binomial function coefficient and the K value of the nearest neighbor algorithm, and the results of the best prediction model for the prediction application of e-commerce agricultural product price and purchase intention are established. Both pricing strategies and promotion strategies will weaken the compromise effect of consumers when they choose e-commerce agricultural products. After studying the calculation method of the KNN algorithm, it not only correctly predicts the price of e-commerce agricultural products but also makes a corresponding prediction and analysis of consumers' purchase intention of e-commerce agricultural products, with the highest accuracy of 94.2. At the same time, in the future precision marketing process, e-commerce agricultural products enterprises use data technology to achieve precision marketing, which effectively changes the shortcomings of traditional marketing and improves the product marketing effect and economic benefits. ? 2022 Jianfeng Zou and Hui Li.
机译:为了更好地了解消费者的购买决策过程,本文基于KNN算法对电子商务产品的精准营销进行了深入研究。本文通过数据挖掘、经典KNN算法、BPNN算法等方法,以电商农产品的价格和购买意愿为例。在经典最近邻算法的基础上,将二项式函数与欧氏距离公式相结合,通过相似性计算最近邻。采用粒子群优化算法对二项式函数系数和最近邻算法的K值进行优化,建立了电商农产品价格和购买意愿预测应用的最佳预测模型结果。无论是定价策略还是促销策略,都会削弱消费者在选择电商农产品时的折衷效应。在研究了KNN算法的计算方法后,它不仅正确预测了电商农产品的价格,而且对消费者对电商农产品的购买意愿做出了相应的预测和分析,准确率最高,为94.2%。同时,在未来的精准营销过程中,电商农产品企业利用数据技术实现精准营销,有效改变了传统营销的短板,提高了产品营销效果和经济效益。?2022 邹剑锋、李慧.

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