Identifying the Geographic Foci of US Local News
Gangani Ariyarathne, Isuru Ariyarathne, Greatness Emmanuel-King, Kate Lawal, Alexander C. Nwala

TL;DR
This paper introduces a novel model that uses large language models and spatial-semantic features to accurately identify the geographic focus of US local news articles, aiding media analysis.
Contribution
It develops a geo-foci classification method combining LLM-based disambiguation and feature engineering, improving accuracy over existing approaches.
Findings
LLMs outperform other geographic disambiguation methods
The classifier achieves an F1 score of 0.86
Model enables analysis of shifts in news narratives
Abstract
Local journalism is vital in democratic societies where it informs people about local issues like, school board elections, small businesses, local health services, etc. But mounting economic pressures have made it increasingly difficult for local news stations to report these issues, underscoring the need to identify the salient geographical locations covered in local news (geo-foci). In response, we propose a novel geo-foci model for labeling US local news articles with the geographic locations (i.e., the names of counties, cities, states, countries) central to their subject matter. First, we manually labeled US local news articles from all 50 states with four administrative division labels (local, state, national, and international) corresponding to their geo-foci, and none for articles without a geographic focus. Second, we extracted and disambiguated geographic locations from them…
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Taxonomy
TopicsComplex Network Analysis Techniques · Human Mobility and Location-Based Analysis · Geographic Information Systems Studies
