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首页> 外文期刊>IEICE Transactions on Information and Systems >Enhancing Digital Book Clustering by LDAC Model
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Enhancing Digital Book Clustering by LDAC Model

机译:通过LDAC模型增强数字图书集群

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摘要

In Digital Library (DL) applications, digital book clustering is an important and urgent research task. However, it is difficult to conduct effectively because of the great length of digital books. To do the correct clustering for digital books, a novel method based on probabilistic topic model is proposed. Firstly, we build a topic model named LDAC. The main goal of LDAC topic modeling is to effectively extract topics from digital books. Subsequently, Gibbs sampling is applied for parameter inference. Once the model parameters are learned, each book is assigned to the cluster which maximizes the posterior probability. Experimental results demonstrate that our approach based on LDAC is able to achieve significant improvement as compared to the related methods.
机译:在数字图书馆(DL)应用程序中,数字书籍集群是一项重要而紧迫的研究任务。但是,由于数字图书的长度很大,因此很难有效地进行操作。为了对数字图书进行正确的聚类,提出了一种基于概率主题模型的新方法。首先,我们建立一个名为LDAC的主题模型。 LDAC主题建模的主要目标是有效地从数字书籍中提取主题。随后,将Gibbs采样应用于参数推断。一旦学习了模型参数,便将每本书分配给丛集,从而使后验概率最大化。实验结果表明,与相关方法相比,我们基于LDAC的方法能够实现重大改进。

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