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Analysis of food security data to predict the impact of the imposition of restrictions on community activities (IRCA) with data mining

    1. [1] Universitas 17 Agustus 1945 Jakarta
  • Localización: Revista iberoamericana de psicología del ejercicio y el deporte, ISSN 1886-8576, Vol. 19, Nº. 2, 2024, págs. 192-198
  • Idioma: inglés
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  • Resumen
    • This paper examined how data mining may analyse food security data and anticipate community activity constraints. Studies have shown that IRCA measures interrupt agricultural operations, diminish crop yields, risk food shortages, raise food costs, increase food poverty, and deplete nutrients. Data mining can handle huge, complicated information, find hidden patterns and relationships, and anticipate food security outcomes. These enable evidence-based decision-making and proactive actions. However, challenges related to data quality, biases, and reliance on historical data must be addressed. Future directions include integrating real-time data sources, such as satellite imagery and social media data, to capture timely information. Additionally, advanced analytics techniques like deep learning and natural language processing can be utilized to analyze unstructured data. Overcoming challenges related to data integration, privacy concerns, interpretability, and transparency will enhance the effectiveness of data mining. In summary, this analysis highlighted the significance of data mining in analyzing food security and predicting the impact of IRCA measures. By leveraging data mining's strengths and addressing its limitations, valuable insights can inform decision-making and promote resilient food systems. Advancements in real-time data integration and advanced analytics techniques hold promise for further enhancing the effectiveness of data mining in addressing food security challenges.


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