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首页> 外文期刊>International journal of applied mechanics >A Multi-Period Product Recommender System in Online Food Market based on Recurrent Neural Networks
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A Multi-Period Product Recommender System in Online Food Market based on Recurrent Neural Networks

机译:基于经常性神经网络的在线食品市场中的多时期产品推荐系统

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摘要

A recommender system supports customers to find information, products, or services (such as music, books, movies, web sites, and digital contents), so it could help customers to make rapid routine decisions and save their time and money. However, most existing recommender systems do not recommend items that are already purchased by the target customer, so are not suitable for considering customers' repetitive purchase behavior or purchasing order. In this research, we suggest a multi-period product recommender system, which can learn customers' purchasing order and customers' repetitive purchase pattern. For such a purpose we applied the Recurrent Neural Network (RNN), which is one of the artificial neural network structures specialized in time series data analysis, instead of collaborative filtering techniques. Recommendation periods are segmented as various time-steps, and the proposed RNN-based recommender system can recommend items by multiple periods in a time sequence. Several experiments with real online food market data show that the proposed system shows higher performance in accuracy and diversity in a multi-period perspective than the collaborative filtering-based system. From the experimental results, we conclude that the proposed system is suitable for multi-period product recommendation, which results in robust performance considering well customers' purchasing orders and customers' repetitive purchase patterns. Moreover, in terms of sustainability, we expect that our study contributes to the reduction of food wastes by inducing planned consumption, and the reduction of shopping time and effort.
机译:推荐系统支持客户查找信息,产品或服务(如音乐,书籍,电影,网站和数字内容),因此它可以帮助客户快速进行常规决策并省去他们的时间和金钱。但是,大多数现有的推荐系统不推荐目标客户已购买的项目,因此不适合考虑客户的重复购买行为或购买订单。在这项研究中,我们建议了一个多时期产品推荐系统,可以学习客户的购买订单和客户重复购买模式。对于这样的目的,我们应用了经常性神经网络(RNN),其是专门序列数据分析的人工神经网络结构之一,而不是协作滤波技术。推荐期间被分段为各种时间步骤,所提出的基于RNN的推荐系统可以在时间顺序中通过多个时段推荐项目。具有真正在线食品市场数据的几个实验表明,该系统在比基于协作滤波的系统的多时期视角下的准确性和多样性表现出更高的性能。从实验结果来看,我们得出的结论是,建议的系统适用于多时期产品推荐,这考虑了客户的购买订单和客户重复购买模式的强大绩效。此外,在可持续发展方面,我们预计我们的研究通过诱导计划消费和减少购物时间和努力,我们的研究有助于减少食品废物。

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