Topic Diffusion Discovery based on Deep Non-negative Autoencoder

Sheng-Tai Huang, Yihuang Kang, Shao-Min Hung, Bowen Kuo, I-Ling Cheng
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引用次数: 3

Abstract

Researchers have been overwhelmed by the explosion of research articles published by various research communities. Many research scholarly websites, search engines, and digital libraries have been created to help researchers identify potential research topics and keep up with recent progress on research of interests. However, it is still difficult for researchers to keep track of the research topic diffusion and evolution without spending a large amount of time reviewing numerous relevant and irrelevant articles. In this paper, we consider a novel topic diffusion discovery technique. Specifically, we propose using a Deep Non-negative Autoencoder with information divergence measurement that monitors evolutionary distance of the topic diffusion to understand how research topics change with time. The experimental results show that the proposed approach is able to identify the evolution of research topics as well as to discover topic diffusions in online fashions.
基于深度非负自编码器的主题扩散发现
研究人员已经被各种研究团体发表的大量研究论文所淹没。许多研究学术网站、搜索引擎和数字图书馆已经建立起来,以帮助研究人员确定潜在的研究主题,并跟上感兴趣的研究的最新进展。然而,如果不花费大量的时间去查阅大量相关和不相关的文章,研究人员仍然很难跟踪研究课题的扩散和演变。本文提出了一种新的主题扩散发现技术。具体来说,我们建议使用带有信息发散测量的深度非负自编码器来监测主题扩散的进化距离,以了解研究主题如何随时间变化。实验结果表明,该方法能够识别研究主题的演变,并发现在线时尚中的主题扩散。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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