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A neural network based price sensitive recommender model to predict customer choices based on price effect

机译:基于神经网络的价格敏感推荐模型,以预测基于价格效应的客户选择

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摘要

The impact of price and price changes should not be ignored while designing algorithms for predicting customer choice. Consumer preferences should be modeled with consideration of price effects. Businesses need to consider for efficient prediction of an individual's purchase behaviour. Personalized recommendation systems have been studied with machine learning algorithms. However, the price-aware personalized recommendation has received little attention. In this paper, we attempt to capture insightful economic results considered in the marketing and economics disciplines by employing modern machine learning architecture for predicting customer choice in a large-scale supermarket context. We extract personalized price sensitivities and examine their importance in consumer behaviour. The employed data collected from a supermarket chain in Germany consists of implicit feedback based on customer-product interactions and the price of every interaction. We propose a two-pathway matrix factorization (2way-MF) model that is price-aware and tries to memorize customer-product interaction's implicit feedback. The proposed models achieve better model performance than standard Matrix Factorization models widely used in the industry. The approach was re-validated with data from supermarket chain in Taiwan. Other industries can adopt the proposed framework of modeling customer's preferences based on price sensitivity. We suggest that further research and analyses could help understand the cross-price elasticities.
机译:在设计算法时,不应忽略价格和价格变化的影响,以预测客户选择。应考虑价格效应,建模消费者偏好。企业需要考虑有效地预测个人的购买行为。使用机器学习算法研究了个性化推荐系统。但是,价格感知的个性化推荐已收到很少的关注。在本文中,我们试图通过使用现代机器学习架构来捕获营销和经济学学科中考虑的富有洞察力的经济效果,以便在大型超市环境中预测客户选择。我们提取个性化价格敏感性,并在消费者行为中检查他们的重要性。从德国超市链中收集的所使用的数据包括基于客户 - 产品互动的隐性反馈和每个互动的价格。我们提出了一个双向矩阵分解(2Way-MF)模型,价格为您感知,并试图记住客户 - 产品交互的隐式反馈。所提出的模型比在行业中广泛使用的标准矩阵分解模型实现更好的模型性能。通过台湾超市链重新验证了该方法。其他行业可以根据价格敏感度采用客户偏好的建议框架。我们建议进一步的研究和分析可以帮助了解跨价格弹性。

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