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Accurate Web Recommendations Based on Profile-Specific URL-Predictor Neural Networks

机译:基于特定于个人资料的URL预测器神经网络的准确Web建议

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We present a Context Ultra-Sensitive Approach based on two-step Recommender systems (CUSA-2-step-Rec). Our approach relies on a committee of profile-specific neural networks. This approach provides recommendations that are accurate and fast to train because only the URLs relevant to a specific profile are used to define the architecture of each network. We compare the proposed approach with collaborative filtering showing that our approach achieves higher coverage and precision while being faster, and requiring lower main memory at recommendation time. While most recommenders are inherently context sensitive, our approach is context ultrasensitive because a different recommendation model is designed for each profile separately.
机译:我们介绍了一种基于两步推荐系统(CUSA-2-Step-Rec)的上下文超敏方法。我们的方法依赖于特定于个人资料委员会的神经网络。这种方法提供了准确且快速训练的建议,因为只有与特定配置文件相关的URL用于定义每个网络的体系结构。我们将提出的方法与协作过滤进行比较,表明我们的方法能够更快地实现更高的覆盖率和精度,同时在推荐时间内需要更低的主存储器。虽然大多数推荐者本质上下文敏感,但我们的方法是上下文超声,因为不同的推荐模型是针对每个轮廓的单独设计的。

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