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Autori principali: Jain, Sameer, Keh, Sedrick Scott, Chettri, Shova, Dewan, Karun, Izquierdo, Pablo, Prussman, Johanna, Shreshtha, Pooja, Suarez, Cesar, Shi, Zheyuan Ryan, Li, Lei, Fang, Fei
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.11818
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author Jain, Sameer
Keh, Sedrick Scott
Chettri, Shova
Dewan, Karun
Izquierdo, Pablo
Prussman, Johanna
Shreshtha, Pooja
Suarez, Cesar
Shi, Zheyuan Ryan
Li, Lei
Fang, Fei
author_facet Jain, Sameer
Keh, Sedrick Scott
Chettri, Shova
Dewan, Karun
Izquierdo, Pablo
Prussman, Johanna
Shreshtha, Pooja
Suarez, Cesar
Shi, Zheyuan Ryan
Li, Lei
Fang, Fei
contents Environmental conservation organizations routinely monitor news content on conservation in protected areas to maintain situational awareness of developments that can have an environmental impact. Existing automated media monitoring systems require large amounts of data labeled by domain experts, which is only feasible at scale for high-resource languages like English. However, such tools are most needed in the global south where news of interest is mainly in local low-resource languages, and far fewer experts are available to annotate datasets sustainably. In this paper, we propose NewsSerow, a method to automatically recognize environmental conservation content in low-resource languages. NewsSerow is a pipeline of summarization, in-context few-shot classification, and self-reflection using large language models (LLMs). Using at most 10 demonstration example news articles in Nepali, NewsSerow significantly outperforms other few-shot methods and achieves comparable performance with models fully fine-tuned using thousands of examples. The World Wide Fund for Nature (WWF) has deployed NewsSerow for media monitoring in Nepal, significantly reducing their operational burden, and ensuring that AI tools for conservation actually reach the communities that need them the most. NewsSerow has also been deployed for countries with other languages like Colombia.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11818
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Where It Really Matters: Few-Shot Environmental Conservation Media Monitoring for Low-Resource Languages
Jain, Sameer
Keh, Sedrick Scott
Chettri, Shova
Dewan, Karun
Izquierdo, Pablo
Prussman, Johanna
Shreshtha, Pooja
Suarez, Cesar
Shi, Zheyuan Ryan
Li, Lei
Fang, Fei
Computation and Language
Artificial Intelligence
Computers and Society
Environmental conservation organizations routinely monitor news content on conservation in protected areas to maintain situational awareness of developments that can have an environmental impact. Existing automated media monitoring systems require large amounts of data labeled by domain experts, which is only feasible at scale for high-resource languages like English. However, such tools are most needed in the global south where news of interest is mainly in local low-resource languages, and far fewer experts are available to annotate datasets sustainably. In this paper, we propose NewsSerow, a method to automatically recognize environmental conservation content in low-resource languages. NewsSerow is a pipeline of summarization, in-context few-shot classification, and self-reflection using large language models (LLMs). Using at most 10 demonstration example news articles in Nepali, NewsSerow significantly outperforms other few-shot methods and achieves comparable performance with models fully fine-tuned using thousands of examples. The World Wide Fund for Nature (WWF) has deployed NewsSerow for media monitoring in Nepal, significantly reducing their operational burden, and ensuring that AI tools for conservation actually reach the communities that need them the most. NewsSerow has also been deployed for countries with other languages like Colombia.
title Where It Really Matters: Few-Shot Environmental Conservation Media Monitoring for Low-Resource Languages
topic Computation and Language
Artificial Intelligence
Computers and Society
url https://arxiv.org/abs/2402.11818