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Documento de Trabalho 03/2022 - Aprendizado de máquina e antitruste

Author

Listed:
  • Tatiana de Macedo Nogueira Lima

    (Conselho Administrativo de Defesa Econômica (Cade), Departamento de Estudos Econômicos)

Abstract

O presente documento tem por objetivo apresentar modelos e procedimentos de aprendizado de máquina que podem ser utilizados em diferentes etapas da análise antitruste.

Suggested Citation

  • Tatiana de Macedo Nogueira Lima, 2022. "Documento de Trabalho 03/2022 - Aprendizado de máquina e antitruste," Documentos de Trabalho 2022030, Conselho Administrativo de Defesa Econômica (Cade), Departamento de Estudos Econômicos.
  • Handle: RePEc:atg:wpaper:2022030
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    References listed on IDEAS

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    More about this item

    Keywords

    Aprendizado de máquina; Modelos; Procedimentos; Análise Antitruste.;
    All these keywords.

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