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Modelling In-Store Consumer Behaviour Using Machine Learning and Digital Signage Audience Measurement Data

机译:使用机器学习和数字标牌受众测量数据对店内消费者行为进行建模

摘要

Audience adaptive digital signage is a new emerging tech- nology, where public broadcasting displays adapt their content to the audience demographic and temporal features. The collected audience measurement data can be used as a unique basis for statistical analysis of viewing patterns, interactive display applications and also for further research and observer modelling. Here, we use machine learning methods on real-world digital signage viewership data to predict consumer behav- iour in a retail environment, especially oriented towards the purchase decision process and the roles in purchasing situations. A case study is performed on data from a small retail shop where demographic and audience data of 1294 store customers were collected, manually verified and analysed. Among all customers, 246 store customers were involved in a buying process that resulted in an actual purchase. Comparison of different machine learning methods shows that by using support vector machines we can predict with 88.6 % classification accuracy whether a customer will actually make a purchase, which outperforms classification accuracy of a baseline (majority) classifier by 7.5%. A similar approach can also be used to predict the roles of an individual in the purchase decision process. We show that by extending the audience measurement dataset with additional heuristic features, the support vector machines classifier on average improves the classification accuracy of a baseline classifier by 15 %.ud
机译:观众自适应数字标牌是一种新兴的技术,公共广播显示器可以根据观众的人口统计和时间特征调整其内容。所收集的受众测量数据可以用作观看模式统计分析,交互式显示应用程序以及进一步研究和观察者建模的唯一基础。在这里,我们对真实的数字标牌收视率数据使用机器学习方法来预测零售环境中的消费者行为,尤其是针对购买决策过程和购买情况中的角色。对来自一家小型零售商店的数据进行了案例研究,该商店收集,手动验证和分析了1294名商店客户的人口统计和受众数据。在所有客户中,有246个商店客户参与了购买过程,最终导致实际购买。对不同机器学习方法的比较表明,通过使用支持向量机,我们可以以88.6%的分类准确度预测客户是否会实际购买商品,这比基准(多数)分类器的分类准确率高7.5%。类似的方法也可以用来预测个人在购买决策过程中的角色。我们显示,通过使用其他启发式功能扩展受众测量数据集,支持向量机分类器平均将基线分类器的分类准确性提高了15%。 ud

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