Machine Learning Based Toolbox in Foreign Language for Children to Address Climate Change Adaptation

Climate change poses a significant threat to our planet, and educating future generations about itsimplications and solutions is paramount for effective adaptation and mitigation efforts. However, language barriers can hinder the dissemination of crucialinformation, particularly to children who may...

Full description

Autores:
Nuñez Leguia, Zuleima
Arteaga Requena, Genis
Anaya Herrera, Jhon
Villamizar Parada, Nini Johana
Martinez Bula, Ligia Rosa
Gándara Molina, Mario Alfonso
Tipo de recurso:
Article of investigation
Fecha de publicación:
2024
Institución:
Corporación Universitaria del Caribe - CECAR
Repositorio:
Repositorio Digital CECAR
Idioma:
OAI Identifier:
oai:repositorio.cecar.edu.co:cecar/10708
Acceso en línea:
https://repositorio.cecar.edu.co/handle/cecar/10708
Palabra clave:
Machine learning
k-nearest neighbou
Decision tree
Climate change
Toolbox
Rights
openAccess
License
Derechos Reservados. Corporación Universitaria del Caribe – CECAR
Description
Summary:Climate change poses a significant threat to our planet, and educating future generations about itsimplications and solutions is paramount for effective adaptation and mitigation efforts. However, language barriers can hinder the dissemination of crucialinformation, particularly to children who may not yet be proficient in the predominant language of scientific discourse. This paper proposes a novel approach to addressing this challenge by developing a machine learning-based toolbox in a foreign language tailored for children. Leveraging advances in natural language processing and educational technology, the toolbox aims to facilitate interactive learning experiences in foreign languages, fostering a deeper understanding of climate change and promoting actionable strategies for adaptation. Machine learning algorithms like k-nearest neighbor, decision tree, logistic regression, and deep learning techniques such as natural language processing and artificial neural networks are being utilized to tackle climate change challenges across different sectors, including transportation