Asaro Peter*
 
*Correspondence: Asaro Peter, Department of Philosophy and Computer Science, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA, Email: asaropeter@gmail.com

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Introduction

In the context of Somalia, ARIMA modeling offers a systematic approach to predicting economic growth based on historical GDP data. Researchers and analysts utilize software tools like R, Python, or MATLAB to implement ARIMA algorithms and assess their performance against observed GDP values. By selecting appropriate ARIMA parameters (e.g., order of autoregression, differencing, and moving average), analysts tailor the model to capture the unique characteristics of Somalia's economy, such as volatile fluctuations, external dependencies, and structural transformations [3].

Despite its utility, ARIMA modeling faces several challenges when applied to forecasting economic growth in Somalia. Data availability and quality issues pose significant obstacles, as Somalia lacks comprehensive and reliable statistical databases due to historical factors and ongoing instability. Incomplete or outdated data can undermine the accuracy and validity of ARIMA forecasts, necessitating alternative approaches or data augmentation techniques. Additionally, the inherent complexity of economic systems, coupled with external factors like global market dynamics and geopolitical events, introduces uncertainty and error into the forecasting process [4].

The findings generated through ARIMA modeling can inform policy formulation, strategic planning, and investment decisions in Somalia. By providing policymakers with insights into future economic trends and performance indicators, ARIMA forecasts enable proactive measures to promote economic stability, attract foreign investment, and foster sustainable development. Moreover, stakeholders can use these forecasts to monitor progress, evaluate policy interventions, and adjust strategies in real-time, thereby enhancing the resilience and adaptability of Somalia's economy amidst evolving challenges [5].

Description

In the context of Somalia, ARIMA modeling offers a systematic approach to predicting economic growth based on historical GDP data. Researchers and analysts utilize software tools like R, Python, or MATLAB to implement ARIMA algorithms and assess their performance against observed GDP values. By selecting appropriate ARIMA parameters (e.g., order of autoregression, differencing, and moving average), analysts tailor the model to capture the unique characteristics of Somalia's economy, such as volatile fluctuations, external dependencies, and structural transformations [3].

Despite its utility, ARIMA modeling faces several challenges when applied to forecasting economic growth in Somalia. Data availability and quality issues pose significant obstacles, as Somalia lacks comprehensive and reliable statistical databases due to historical factors and ongoing instability. Incomplete or outdated data can undermine the accuracy and validity of ARIMA forecasts, necessitating alternative approaches or data augmentation techniques. Additionally, the inherent complexity of economic systems, coupled with external factors like global market dynamics and geopolitical events, introduces uncertainty and error into the forecasting process [4].

The findings generated through ARIMA modeling can inform policy formulation, strategic planning, and investment decisions in Somalia. By providing policymakers with insights into future economic trends and performance indicators, ARIMA forecasts enable proactive measures to promote economic stability, attract foreign investment, and foster sustainable development. Moreover, stakeholders can use these forecasts to monitor progress, evaluate policy interventions, and adjust strategies in real-time, thereby enhancing the resilience and adaptability of Somalia's economy amidst evolving challenges [5].

Conclusion

Forecasting economic growth in Somalia through ARIMA modeling represents a valuable endeavor with far-reaching implications for the country's development trajectory. Despite the methodological complexities and data limitations inherent in such forecasting exercises, ARIMA models offer a systematic and data-driven approach to understanding and predicting economic dynamics. By leveraging the insights gleaned from ARIMA forecasts, stakeholders can navigate uncertainties, mitigate risks, and advance the socioeconomic resilience of Somalia in pursuit of sustainable growth and prosperity.

Acknowledgement

None.

Conflict of Interest

None.

References

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Author Info

Department of Philosophy and Computer Science, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA
 

Received: 29-Feb-2024, Manuscript No. ijems-24-134314; Editor assigned: 02-Mar-2024, Pre QC No. P-134314; Reviewed: 16-Mar-2024, QC No. Q-134314; Revised: 22-Mar-2024, Rev Manuscript No. R-134314; Published: 30-Mar-2024, DOI: 10.37421/2162-6359.2024.13.721

Citation: Peter, Asaro. “Forecasting Economic Growth in Somalia through ARIMA Modeling: A Review.” Int J Econ Manag Sci 13 (2024): 721.

Copyright: © 2024 Peter A. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.<