TL;DR
This paper introduces a computational framework that uses natural language processing and machine learning to extract and analyze the semantic relatedness between cities from a large corpus of news articles, revealing insights into city relationships and their geographic influences.
Contribution
The paper presents a novel framework combining NLP and machine learning to automatically analyze city relatedness from news articles, enabling large-scale, topic-specific, and temporal city network studies.
Findings
Semantic relatedness varies across topics and over time.
Geographic distance impacts city relatedness with varied decay effects.
The framework effectively visualizes and analyzes city relationships at scale.
Abstract
News articles capture a variety of topics about our society. They reflect not only the socioeconomic activities that happened in our physical world, but also some of the cultures, human interests, and public concerns that exist only in the perceptions of people. Cities are frequently mentioned in news articles, and two or more cities may co-occur in the same article. Such co-occurrence often suggests certain relatedness between the mentioned cities, and the relatedness may be under different topics depending on the contents of the news articles. We consider the relatedness under different topics as semantic relatedness. By reading news articles, one can grasp the general semantic relatedness between cities, yet, given hundreds of thousands of news articles, it is very difficult, if not impossible, for anyone to manually read them. This paper proposes a computational framework which can…
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