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基于深度学习和聚类的健康信息供需主题一致性建模框架

A deep learning and clustering‐based topic consistency modeling framework for matching health information supply and demand

Journal of the Association for Information Science and Technology (JASIST) · 2023
被引 12
ABS 3

中文导读

提出一个整合深度学习和聚类技术的框架,对健康信息的供给侧和需求侧主题建模并量化匹配度,实证发现健康信息供给普遍不足,尤其疾病相关主题供需不一致,有助于政策制定者和内容生产者优化信息传播策略。

Abstract

Abstract Improving health literacy through health information dissemination is one of the most economical and effective mechanisms for improving population health. This process needs to fully accommodate the thematic suitability of health information supply and demand and reduce the impact of information overload and supply–demand mismatch on the enthusiasm of health information acquisition. We propose a health information topic modeling analysis framework that integrates deep learning methods and clustering techniques to model the supply‐side and demand‐side topics of health information and to quantify the thematic alignment of supply and demand. To validate the effectiveness of the framework, we have conducted an empirical analysis on a dataset with 90,418 pieces of textual data from two prominent social networking platforms. The results show that the supply of health information in general has not yet met the demand, the demand for health information has not yet been met to a considerable extent, especially for disease‐related topics, and there is clear inconsistency between the supply and demand sides for the same health topics. Public health policy‐making departments and content producers can adjust their information selection and dissemination strategies according to the distribution of identified health topics, thereby improving the effectiveness of public health information dissemination.

健康信息传播深度学习聚类分析公共卫生信息供需匹配