Predicting shoppers' interest from social interactions using sociometric sensors

T. Kim, Maurice Chu, Oliver Brdiczka, James Begole
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引用次数: 26

Abstract

Marketing research has longed for better ways to measure consumer behavior. In this paper, we explore using sociometric data to study social behaviors of group shoppers. We hypothesize that the interaction patterns among shoppers will convey their interest level, predicting probability of purchase. To verify our hypotheses, we observed co-habiting couples shopping for furniture. We have verified that there are sensible differences in customer behavior depending on their interest level. When couples are interested in an item they observe the item for a longer duration of time and have a more balanced speaking style. A real-time prediction model was constructed using a decision tree with a prediction accuracy reaching 79.8% and a sensitivity of 63%.
利用社会测量传感器从社交互动中预测购物者的兴趣
市场研究一直渴望找到更好的方法来衡量消费者的行为。本文探讨了利用社会计量学数据来研究团购群体的社会行为。我们假设购物者之间的互动模式将传达他们的兴趣水平,预测购买概率。为了验证我们的假设,我们观察了同居夫妇购买家具的情况。我们已经证实,根据客户的兴趣水平,他们的行为会有明显的差异。当情侣们对某件物品感兴趣时,他们观察这件物品的时间会更长,说话的风格也会更平衡。利用决策树构建了实时预测模型,预测精度达到79.8%,灵敏度达到63%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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