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Detection of Outliers in The Peruvian Fruit Production Time Series Using Arima Models

  • Manuel Chávez
  • , Israel Chávez
  • , Eduardo Torres
  • , Sandro Atoche
  • , Stefano Palacios
  • , Luis Trelles
  • , Cristhian Aldana
  • , Yesenia Saavedra
  • , Gustavo Mendoza
  • , Nelson Chuquihuanca
  • Universidad Nacional de Frontera

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

Abstract

The present applied, non-experimental, descriptive and prognostic research; was aimed at detecting outliers in the agricultural production of Mangifera indica (mango), Persea americana (avocado) and Citrus x aurantifolia (lemon) at the national level, was performed by applying an ARIMA Model. To fulfill it purposes, documentary analysis was used at the National Institute of Statistics and Informatics (In Spanish, INEI). The study sample consisted of the mango, avocado and lemon production indices 2000-2020. As a result, the models were obtained arima mango (1,0,0) (2,1,2) (AIC=5448.99, BIC=5473.35 and RMSE=19067.93), arima avocado (0,1,3) (2,1,0) (AIC=4687.05, BIC=4707.91 and RMSE=4114.35) and arima lemon (1,0,1) (0,1,1) (AIC=4484.36, BIC=4501.76 and RMSE=2551.96) with a 12 months period, the diagram of boxes and whiskers was also made with which it was identified that atypical data (Outliers) abound in the periods of greatest production.

Original languageEnglish
Title of host publicationApplied Human Factors and Ergonomics International
PublisherAHFE International
DOIs
StatePublished - 2022

Publication series

NameApplied Human Factors and Ergonomics International
Volume22
ISSN (Electronic)2771-0718

Keywords

  • agricultural crops
  • ARIMA
  • forecast
  • Outliers
  • times series

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