Research

Hybrid ARIMA-SVR-MLP Model for Forecasting Nigeria’s Gross Domestic Product (GDP)

Babafemi Daniel Ogunbona; Olajumoke Rosemary Akinbinu & Abigail Folashade Alade.
Published:
November 25, 2024
Submitted:
January 10, 2026

Abstract

This paper proposes a novel hybrid ARIMA-SVR-MLP model that integrates Autoregressive Integrated Moving Average (ARIMA), Support Vector Regression (SVR), and Multilayer Perceptron (MLP) neural network to forecast Nigeria's Gross Domestic Product (GDP). The models were fitted on yearly GDP data from 1960-2022. The series was tested for stationarity using the Augmented Dickey-Fuller (ADF) test and found to be stationary at the first differencing. Based on model selection criteria, ARIMA (1, 1, 0) was identified as the appropriate ARIMA model. Support Vector Regression (SVR) was also applied to the original series to capture the nonlinearity that might not have been accounted for by ARIMA. The predictions of the best ARIMA and SVR models were then used as inputs for the MLP neural network to form the hybrid model. Out-of-sample forecasts demonstrate that the hybrid model outperforms individual models in terms of accuracy

Keywords

Forecasting, GDP, Hybrid ARIMA-SVR-MLP, Modelling

Full Text

Author Information

Babafemi Daniel Ogunbona; Olajumoke Rosemary Akinbinu & Abigail Folashade Alade.

Article Actions

Download PDF

Article Metrics

Views 15
Downloads 8
Citations 0

Related Articles