应用机器学习研究社会营销环境下营销组合的有效性

Pub Date : 2022-10-18 DOI:10.4018/ijban.313416
Sibei Xia, Chuanlan Liu
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引用次数: 0

摘要

本研究考察了高端和低端时尚品牌在Twitter上实施的营销组合的有效性,并探讨了在不同的疫情阶段,是否有任何4p活动发生了变化。设计了一种定量研究方法来分析从确定的时尚品牌Twitter账户中抓取的文本数据。基于4p营销组合,开发了一种分类工具来对推文进行分组。然后将开发的工具应用于从收集的数据中随机抽样的145条推文的一小部分。然后使用样本集训练逻辑回归模型,以预测所有收集的144k推文上的四个p活动。每条推文的点赞数和每条推文被转发的频率被用来衡量各品牌的参与效果。
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Applying Machine Learning to Study the Marketing Mix's Effectiveness in a Social Marketing Context
This study examines the effectiveness of the marketing mix practiced on Twitter across high-end and low-end fashion brands and explores whether any four Ps activities have changed across the different pandemic stages. A quantitative research method was designed to analyze text data scraped from identified fashion brands' Twitter accounts. A classification instrument was developed to group tweets based on the four Ps marketing mix. Then the developed instrument was applied to a small set of 145 tweets randomly sampled from the collected data. Logistic regression models were then trained using the sample set to predict four Ps activities on all the collected 144k tweets. The numbers of likes per tweet and frequencies of being retweeted per tweet were used to measure engagement effectiveness across brands.
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