Innovative Applications of Artificial Neural Networks in Tax Forecasting

Autores

DOI:

https://doi.org/10.22279/navus.v16.1953

Resumo

The importance of forecasting tax revenues is vital for economic planning and financial sustainability in Mozambique. The study addresses this topic by exploring the potential of Artificial Neural Networks (ANNs) to improve such predictions. The central problem is the limitation of conventional methods in capturing the complexity of fiscal data. The objective is to develop an ANN model that incorporates historical data and economic factors, providing a mixed methodology that enriches the analysis with qualitative and quantitative data. The rationale for adopting ANNs lies in their superior modeling and prediction capabilities in large and complex data environments. The results achieved demonstrate that ANNs can predict tax revenues with greater accuracy, surpassing traditional models. The conclusion points to the ANN as a valuable tool for tax authorities, enhancing efficiency in collection and contributing to the country's fiscal stability.

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Biografia do Autor

Bruno Couto de Abreu Rodolfo, Universidade Eduardo Mondlane

Master in Information Systems.

Bruno Miguel Ferreira Gonçalves, Instituto Politécnico de Bragança

Research Centre in Basic Education (CIEB).

Publicado

2025-03-31

Edição

Seção

Artigos