Regional Economic Growth Forecast Based on Artificial Intelligence and Computer Vision Model
DOI:
https://doi.org/10.56294/sctconf2024684Keywords:
Economic Growth Forecast, Artificial Intelligence, Computer Vision, Artificial Neuron ModelAbstract
Introduction: regional economic growth can be predicted to make more effective countermeasures and promote the development of local regions. However, the existing regional economic growth forecasting models have the problems that the forecasting speed is too slow and the forecasting results are inaccurate, which greatly hinders people's understanding of economic growth.
Methods: based on artificial intelligence and computer vision model, this paper designed a regional economic growth forecast model and predicted the economic growth of different regions. Through testing different areas, it was found that: The prediction risk index of the economic growth prediction model based on artificial intelligence and computer vision model was lower.
Results: Among them, the accuracy rate was increased by 6,9 %, and the prediction speed was improved, as well as the user satisfaction rate was increased by 9,16 %.
Conclusion: Therefore, artificial intelligence and computer vision technology could optimize the regional economic growth forecast model
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Copyright (c) 2024 Yong Yin, Dongyu Zhang, Yueran Xu, Xiaomeng Zhang, Yonghong Wang (Author)
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