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Aplique modelos de linguagem grandes pré-treinados em pesquisas financeiras com IA

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  • Kim, Donghyun

Abstract

No passado recente, o uso de modelos de linguagem pré-treinados (PLMs) ganhou imensa popularidade para tarefas de processamento de linguagem natural (NLP). Este artigo avalia as capacidades desses modelos no setor financeiro, juntamente com os obstáculos que eles enfrentam nesse domínio. O artigo também avalia a transparência desses modelos e as questões éticas relacionadas ao seu uso em finanças. Nosso estudo mostra que os PLMs têm o potencial de transformar a forma como os dados financeiros são analisados e processados. No entanto, é crucial abordar os desafios e as preocupações éticas associadas à sua implementação para garantir que sejam usados de forma ética e responsável. Estudos futuros se concentrarão em melhorar os modelos para gerenciar a instabilidade dos dados financeiros, reduzir o viés nos dados de treinamento e oferecer previsões transparentes. Em conclusão, acreditamos que o avanço da IA em finanças será determinado pelo crescimento e implementação de modelos de linguagem pré-treinados.

Suggested Citation

  • Kim, Donghyun, 2023. "Aplique modelos de linguagem grandes pré-treinados em pesquisas financeiras com IA," OSF Preprints 2r7gv, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:2r7gv
    DOI: 10.31219/osf.io/2r7gv
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