Journal of
Economics and International Finance

  • Abbreviation: J. Econ. Int. Finance
  • Language: English
  • ISSN: 2006-9812
  • DOI: 10.5897/JEIF
  • Start Year: 2009
  • Published Articles: 364

Full Length Research Paper

Optimization of diamond price prediction strategies using machine learning techniques

Manuel Sánchez Sánchez
  • Manuel Sánchez Sánchez
  • Department of Economic Theory and Mathematical Economics, National University of Distance Education (UNED), Paseo de la Senda del Rey, Madrid, Spain.
  • Google Scholar


  •  Received: 17 July 2024
  •  Accepted: 05 August 2024
  •  Published: 31 August 2024

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