加权关键词共现网络的潜在空间模型及其在统计学知识发现中的应用

A Latent Space Model for Weighted Keyword Co-Occurrence Networks with Applications in Knowledge Discovery in Statistics

Journal of Computational and Graphical Statistics · 2024
被引 7 · 同刊同年前 3%
ABS 3

中文导读

本文构建了加权动态关键词共现网络,并提出一个能处理加权和节点随时间变化的潜在空间模型,用于分析统计学领域的关键词关联和趋势。

Abstract

Keywords are widely recognized as pivotal in conveying the central idea of academic articles. In this article, we construct a weighted and dynamic keyword co-occurrence network and propose a latent space model for analyzing it. Our model has two special characteristics. First, it is applicable to weighted networks; however, most previous models were primarily designed for unweighted networks. Simply replacing the frequency of keyword co-occurrence with binary values would result in a significant loss of information. Second, our model can handle the situation where network nodes evolve over time, and assess the effect of new nodes on network connectivity. We use the projected gradient descent algorithm to estimate the latent positions and establish the theoretical properties of the estimators. In the real data application, we study the keyword co-occurrence network within the field of statistics. We identify popular keywords over the whole period as well as within each time period. For keyword pairs, our model provides a new way to assess the association between them. Finally, we observe that the interest of statisticians in emerging research areas has gradually grown in recent years. Supplementary materials for this article are available online.

知识发现文本挖掘统计方法网络分析关键词分析