首页> 外文期刊>Iran Journal of Computer Science >Hybrid location-centric e-Commerce recommendation model using dynamic behavioral traits of customer
【24h】

Hybrid location-centric e-Commerce recommendation model using dynamic behavioral traits of customer

机译:利用客户动态行为特征的以位置为中心的混合电子商务推荐模型

获取原文
获取原文并翻译 | 示例
           

摘要

Major e-Commerce service provider offers additional product recommendation to its customers, while they access the application, and enough evidence existing that such recommendations are cost effective for both consumer and service provider. For maximizing profit and to satisfy the user, existing e-Commerce platforms use long-term context for recommendations. In actual scenario, the recommendation can aid the user for other reason such as when the product is reminded of recent interest in or, point customer to currently discounted items. Furthermore, user preference changes over time due to weather, location, etc. As a result, the recommendation must be made based on the present behavior of the ongoing session. Many research based on location and session-based approaches has been presented to forecast user's next-item requirement. However, these models are not efficient, as they are designed either to model short-term or long-term preferences. Recently, some hybrid recommendation algorithms have been presented to model both short-term and long term, but these models are designed considering static behavior and finds difficulty in revealing the correlations among behaviors and items. Furthermore, these models do not consider location-centric information for performing recommendation. To overcome the above-mentioned challenges, our research work presents hybrid location-centric prediction (HLCP) model by considering the dynamic behavior traits of users. HLCP model can learn both short-term and long-term context efficiently. Experiment results show that HLCP attains significant performance over existing models in terms of mean reciprocal rate (MMR) and hit rate (HR).
机译:大型电子商务服务提供商在其客户访问应用程序时会向其客户提供其他产品推荐,并且有足够的证据表明此类推荐对于消费者和服务提供商均具有成本效益。为了使利润最大化并满足用户需求,现有的电子商务平台使用长期的环境作为建议。在实际情况中,推荐可以出于其他原因(例如,当产品被提醒想起最近的兴趣或将客户指向当前打折的商品时)来帮助用户。此外,由于天气,位置等原因,用户偏好会随时间变化。结果,必须基于正在进行的会话的当前行为来做出推荐。已经提出了许多基于位置和基于会话的方法的研究来预测用户的下一项需求。但是,这些模型效率不高,因为它们被设计为对短期或长期偏好进行建模。最近,提出了一些混合推荐算法来对短期和长期模型进行建模,但是这些模型是在考虑静态行为的情况下设计的,因此难以揭示行为与项目之间的相关性。此外,这些模型不考虑以位置为中心的信息来执行推荐。为了克服上述挑战,我们的研究工作通过考虑用户的动态行为特征提出了混合位置中心预测(HLCP)模型。 HLCP模型可以有效地学习短期和长期情境。实验结果表明,HLCP在平均倒数率(MMR)和命中率(HR)方面比现有模型具有显着的性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号