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A Self-Adaptive Context-Aware Model for Mobile Commerce

机译:用于移动商务的自适应上下文感知模型

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Use of mobile devices for the online shopping is growing ever. This paper addresses the problem of querying the contents relevant to the current context of the mobile node. We present a context-aware model that can incrementally learn the user preferences and location-based content retrieval for the purpose of one-to-one marking strategy. The model is based on Monte-Carlo sampling and tree induction method. Monte-Carlo sampling is used to construct the synopsis structure while tree induction is used to predict the user preferences in the current context. The model is evaluated using two benchmark datasets for offline testing and an application is developed to test the model online. The results show an obvious advantage of using the Monte-Carlo based tree induction method as compare to its state-of-the-art rivals.
机译:越来越多的移动设备用于在线购物。本文解决了查询与移动节点当前上下文相关的内容的问题。我们提出了一种上下文感知模型,该模型可以以一对一的标记策略为目的,逐步学习用户的喜好和基于位置的内容检索。该模型基于蒙特卡洛采样和树归纳法。蒙特卡洛采样用于构造提要结构,而树归纳法则用于预测当前上下文中的用户偏好。使用两个基准数据集对模型进行评估,以进行离线测试,并开发了一个应用程序以在线测试模型。结果表明,与基于其最新技术的竞争对手相比,使用基于蒙特卡洛的树木归纳法具有明显的优势。

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