基于多层SOM的图书作者树状表示及其推荐

Lu Lu, Haijun Zhang
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引用次数: 4

摘要

本文介绍了一个作者推荐的新框架——多层自组织映射(ML-SOM)。具体而言,采用树状结构对作者进行建模,并采用基于mlsom的系统有效地解决了基于内容的作者推荐问题。树状结构的表示在作者传记、已写的书和书评的层次结构中表述作者的特征。为了有效地处理树结构表示,我们使用MLSOM算法作为聚类技术来处理作者。我们的方法的有效性在一个包含7426位作者、他们写的205805本书和读者提供的3027502条评论的大型数据集中得到了检验。实验结果证实了该方法优于现有算法,为作者推荐提供了一个有希望的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A tree-structured representation for book author and its recommendation using multilayer SOM
This paper introduces a new framework for author recommending using Multi-Layer Self-Organizing Map (ML-SOM). Concretely, an author is modeled by a tree-structured representation, and an MLSOM-based system is used as an efficient solution to the content-based author recommending problem. The tree-structured representation formulates author features in a hierarchy of author biography, written books and book comments. To efficiently tackle the tree-structured representation, we use an MLSOM algorithm that serves as a clustering technique to handle authors. The effectiveness of our approach was examined in a large-scale dataset containing 7426 authors, 205805 books they wrote, and 3027502 comments that readers have provided. The experimental results corroborate that the proposed approach outperforms current algorithms and can provide a promising solution to author recommendation.
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