Location-based Orientation Context Dependent Recommender System for Users

Vijesh Joe C, Jennifer S. Raj
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引用次数: 35

Abstract

As the technology revolving around IoT sensors develops in a rapid manner, the subsequent social networks that are essential for the growth of the system will be utilized as a means to filter the objects that are preferred by the consumers. The ultimate purpose of the system is to give the customers personalized recommendations based on their preference. Similarly, the location and orientation will also play a crucial role in identifying the preference of the customer is a more efficient manner. Almost all social networks make use of location information to provide better services to the users based on the research performed. Hence there is a need for developing a recommender system that is dependent on location. In this paper, we have incorporated a recommender system that makes use of recommender algorithm that is personalized to take into consideration the context of the user. The preference of the user is analysed with the help of IoT smart devices like the smart watches, Google home, smart phones, ipads etc. The user preferences are obtained from these devices and will enable the recommender system to gauge the best resources. The results based on evaluation are compared with that of the content-based recommender algorithm and collaborative filtering to enable the recommendation engine’s power.
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基于位置的用户定向上下文相关推荐系统
随着围绕物联网传感器的技术快速发展,对系统发展至关重要的后续社交网络将被用作过滤消费者偏好对象的手段。该系统的最终目的是根据顾客的喜好给他们个性化的推荐。同样,位置和方向也将发挥至关重要的作用,以确定顾客的偏好是一种更有效的方式。根据所做的研究,几乎所有的社交网络都利用位置信息为用户提供更好的服务。因此,有必要开发一个依赖于位置的推荐系统。在本文中,我们整合了一个推荐系统,该系统利用个性化的推荐算法来考虑用户的上下文。通过物联网智能设备,如智能手表、谷歌家居、智能手机、ipad等,分析用户的偏好。从这些设备中获得用户偏好,并将使推荐系统能够衡量最佳资源。将基于评价的推荐结果与基于内容的推荐算法和协同过滤的推荐结果进行比较,以发挥推荐引擎的强大功能。
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