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首页> 外文期刊>Journal of management information systems >A Novel Recommendation Model for Online-to-Offline Service Based on the Customer Network and Service Location
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A Novel Recommendation Model for Online-to-Offline Service Based on the Customer Network and Service Location

机译:基于客户网络和服务位置的在线到脱机服务的新推荐模型

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摘要

We propose a new online-to-offline (O2O) service recommendation method based on a novel customer network and service location (CNLRec) in order to help customer to choose the "ideal" O2O services from a large set of alternatives. Our customer network, based on the "co-used" behaviors obtained from the online rating matrix, captures customers' online behaviors while service location reflects offline behavior characteristic of the customer. For a target customer, a ranking of candidate services based on their locations and this network is generated, in which customer scale usage bias is eliminated. Our experimental results show that: First, even though the rating matrix is sparse, most customers are connected to our proposed customer network, which largely addresses the problem of sparse data. Second, CNLRec outperforms widely-used and state-of-the-art recommendation methods. In addition, e-commerce recommendations that use CNLRec without including item location information (CNRec) has better performance than existing methods. Third, all attributes in CNLRec, including network attributes (relationship degree and customer attribute) and location attributes, play a significant role in recommendations. Specially, O2O service location plays an important role in O2O service selection. In our research, we find the optimal combinations of these attributes.
机译:我们提出了一种基于新颖的客户网络和服务地点(CNLREC)的新的在线到脱机(O2O)服务推荐方法,以帮助客户从一大堆替代方案中选择“理想”O2O服务。我们的客户网络基于从在线评级矩阵获得的“共同使用”行为,捕获客户的在线行为,而服务位置反映客户的离线行为特征。对于目标客户,生成基于其位置和该网络的候选服务的排名,其中消除了客户规模使用偏差。我们的实验结果表明:首先,即使评级矩阵稀疏,大多数客户都连接到我们所提出的客户网络,这在很大程度上解决了稀疏数据的问题。其次,CNLREC优于广泛使用的和最先进的推荐方法。此外,使用CNLREC而不包括物品位置信息(CNREC)的电子商务建议具有比现有方法更好的性能。三,CNLREC中的所有属性,包括网络属性(关系程度和客户属性)和位置属性,在建议中发挥着重要作用。特别是O2O服务位置在O2O服务选择中起着重要作用。在我们的研究中,我们找到了这些属性的最佳组合。

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