Inteligencia Artificial y Derecho
el impacto transformador en la organización de grandes colecciones de textos jurídicos
DOI:
https://doi.org/10.35699/2965-6931.2023.47689Palabras clave:
proceso de lenguaje natural, modelos de lengua, modelaje de temas, directo, organização de acervos jurídicosResumen
Los recientes avances en el área de la inteligencia artificial y el procesamiento del lenguaje natural han impulsado varios cambios en el ámbito legal. En Brasil, el Derecho sigue un constante movimiento de modernización, dirigido principalmente hacia la transparencia y el acceso a la información. El gran volumen de documentos legales da lugar al desarrollo y uso de herramientas inteligentes que buscan organizar y facilitar la gestión de este acervo. En este trabajo mostramos cómo el uso de modelos de lenguaje junto con técnicas de modelado de tópicos son capaces de organizar y extraer conocimiento de estos grandes acervos jurídicos, revelando temas muchas veces implícitos y desconocidos, lo que trae beneficios a diversas aplicaciones, como la búsqueda para documentos similares y la recomendación de textos legales.Descargas
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