A methodology for coffee price forecasting based on extreme learning machines

This work introduces a methodology to estimate coffee prices based on the use of Extreme Learning Machines. The process is initiated by identifying the presence of nonstationary components, like seasonality and trend. These components are withdrawn if they are found. Next, the temporal lags are sele...

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Veröffentlicht in:Information processing in agriculture 2022-12, Vol.9 (4), p.556-565
Hauptverfasser: Deina, Carolina, do Amaral Prates, Matheus Henrique, Alves, Carlos Henrique Rodrigues, Martins, Marcella Scoczynski Ribeiro, Trojan, Flavio, Stevan, Sergio Luiz, Siqueira, Hugo Valadares
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Sprache:eng
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Zusammenfassung:This work introduces a methodology to estimate coffee prices based on the use of Extreme Learning Machines. The process is initiated by identifying the presence of nonstationary components, like seasonality and trend. These components are withdrawn if they are found. Next, the temporal lags are selected based on the response of the Partial Autocorrelation Function filter. As predictors, we address the following models: Exponential Smoothing (ES), Autoregressive (AR) and Autoregressive Integrated and Moving Average (ARIMA) models, Multilayer Perceptron (MLP) and Extreme Learning Machines (ELMs) neural networks. The computational results based on three error metrics and two coffee types (Arabica and Robusta) showed that the neural networks, especially the ELM, can reach higher performance levels than the other models. The methodology, which presents preprocessing stages, lag selection, and use of ELM, is a novelty that contributes to the coffee prices forecasting field.
ISSN:2214-3173
2214-3173
DOI:10.1016/j.inpa.2021.07.003