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首页> 外文期刊>International Journal of Distributed Sensor Networks >A Dynamic Users’ Interest Discovery Model with Distributed Inference Algorithm
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A Dynamic Users’ Interest Discovery Model with Distributed Inference Algorithm

机译:分布式推理算法的动态用户兴趣发现模型

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One of the key issues for providing users user-customized or context-aware services is to automatically detect latent topics, users’ interests, and their changing patterns from large-scale social network information. Most of the current methods are devoted either to discovering static latent topics and users’ interests or to analyzing topic evolution only from intrafeatures of documents, namely, text content, without considering directly extrafeatures of documents such as authors. Moreover, they are applicable only to the case of single processor. To resolve these problems, we propose a dynamic users’ interest discovery model with distributed inference algorithm, named as Distributed Author-Topic over Time (D-AToT) model. The collapsed Gibbs sampling method following the main idea of MapReduce is also utilized for inferring model parameters. The proposed model can discover latent topics and users’ interests, and mine their changing patterns over time. Extensive experimental results on NIPS (Neural Information Processing Systems) dataset show that our D-AToT model is feasible and efficient.
机译:为用户提供用户自定义或上下文感知服务的关键问题之一是自动从大规模社交网络信息中检测潜在主题,用户兴趣及其变化模式。当前大多数方法都致力于发现静态潜在主题和用户兴趣,或者仅从文档内部功能(即文本内容)分析主题演变,而没有直接考虑诸如作者之类的文档外部功能。而且,它们仅适用于单处理器的情况。为了解决这些问题,我们提出了一种具有分布式推理算法的动态用户兴趣发现模型,该模型被称为“分布式随时间分布的作者主题”(D-AToT)模型。遵循MapReduce的主要思想的折叠Gibbs采样方法也用于推断模型参数。提出的模型可以发现潜在的主题和用户的兴趣,并挖掘其随着时间的变化模式。在NIPS(神经信息处理系统)数据集上的大量实验结果表明,我们的D-AToT模型是可行且高效的。

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