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The best preferred product location recommendation according to user context and the preferences

机译:根据用户上下文和首选项的最佳首选产品位置推荐

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Currently the Smartphones are more popular among the community with the available technologies such as sensor-based interactions and smart apps. The other kinds of trends in such apps lead on context awareness and the personalization for recommending the services for the users based on their context and the preferences. Further, the researches are going on tracking the location of a person and guiding them to the nearby places where the products and the services are available according to their preferences. To accomplish such tasks, tracking and analyzing of the user preferences on different categories of products is required. This paper describes a mobile-based solution; NavToPref where the user preferences and the contextual information are gathered from their mobile phones and recommend and guide them to the nearby locations where the most preferred products are available. Analyzing the metadata of the sites of the frequently and mostly searched products, their top preferred categories of products are identified. This is done by the analysis of the browsing history. Further from their mobile devices, their own contextual information such as whether, location, identified special events from the Google calendar are collected to achieve more personalization on product recommendation. By analyzing the identified preferred products and the user context at the moment, the best preferred product/service locations are notified in the Google map with the shortest path for each product location from the users current location and allows the user to navigate to such locations. If someone is looking for a best promotional deal for shopping, that information is notified along with the recommendation.
机译:当前,智能手机凭借诸如基于传感器的交互和智能应用之类的可用技术在社区中更受欢迎。这种应用程序中的其他趋势导致上下文感知和个性化,用于根据用户的上下文和偏好为用户推荐服务。此外,研究正在继续追踪人的位置,并根据他们的喜好将他们引导到附近可以使用产品和服务的地方。为了完成这些任务,需要跟踪和分析不同类别产品上的用户偏好。本文介绍了一种基于移动设备的解决方案。 NavToPref,从他们的手机中收集用户的喜好和上下文信息,并向他们推荐并指导他们到附近可获得最喜欢产品的位置。通过分析经常搜索和频繁搜索的产品的站点的元数据,可以确定其最喜欢的产品类别。这是通过分析浏览历史记录来完成的。进一步从他们的移动设备中,收集他们自己的上下文信息,例如是否,位置,从Google日历中识别出的特殊事件,以实现对产品推荐的更多个性化。通过分析当前识别出的首选产品和用户上下文,可以从用户当前位置以每个产品位置的最短路径在Google地图中通知最佳首选产品/服务位置,并允许用户导航至此类位置。如果某人正在寻找购物的最佳促销协议,则该信息将与推荐信息一起通知。

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