2022
DOI: 10.1155/2022/1967607
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Back-Propagation Neural Network and ARIMA Algorithm for GDP Trend Analysis

Abstract: GDP (gross domestic product) is a key indicator for assessing a country’s or region’s macroeconomic situation, as well as a foundation for the government to develop economic development strategies and macroeconomic policies. Currently, the majority of methods for forecasting GDP are linear methods, which only take into account the linear factors that affect GDP. GDP (gross domestic product) is widely regarded as the most accurate indicator of a country’s economic health. GDP not only reflects a country’s econo… Show more

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citations
Cited by 6 publications
(8 citation statements)
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References 18 publications
(14 reference statements)
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“…Comparison between the proposed approach and other scientific papers, such as those documented by Muchisha et al [8,20,25,23], reveals a broad application of machine-learning techniques and deep learning for GDP prediction. These studies reported accuracies of 91%, 80-90%, 98.71%, and 87%, respectively.…”
Section: Validate the Proposed Approach With Some Previous Studiesmentioning
confidence: 80%
See 1 more Smart Citation
“…Comparison between the proposed approach and other scientific papers, such as those documented by Muchisha et al [8,20,25,23], reveals a broad application of machine-learning techniques and deep learning for GDP prediction. These studies reported accuracies of 91%, 80-90%, 98.71%, and 87%, respectively.…”
Section: Validate the Proposed Approach With Some Previous Studiesmentioning
confidence: 80%
“…In the study by Hua [25], used the ARIMA and BPNN models to create a GDP forecasting model for the province of H. The results showed that the ARIMA model had a better long-term predictive effect than the improved combined model, and that the combined model outperformed a short-term prediction.…”
Section: Related Workmentioning
confidence: 99%
“…SARIMA is an extension of the ARIMA model, which also considers seasonality. In the fourth group of studies, models using neural networks more rarely implemented than LSTM were studied [7,8,[33][34][35]. In this group are works that combined ARIMA with back propaga-tion neural networks (BPNN) [33][34][35] or works that combined ARIMA with generalized regression neural networks (GRNN) [7,8].…”
Section: Resultsmentioning
confidence: 99%
“…In the fourth group of studies, models using neural networks more rarely implemented than LSTM were studied [7,8,[33][34][35]. In this group are works that combined ARIMA with back propaga-tion neural networks (BPNN) [33][34][35] or works that combined ARIMA with generalized regression neural networks (GRNN) [7,8]. In the last group are models that include wavelet transform decomposition that allows for the separation of linear and nonlinear parts of a temporal series a priori to the actual forecasting [8,[36][37][38].…”
Section: Resultsmentioning
confidence: 99%
“…When using ANN to simulate the existing urban green space system planning [26,27], the omnidirectional expression of the landscape index should be considered on the whole green space landscape as far as possible and the index change should be evaluated after the construction of the network from the following aspects:…”
Section: Application Of Urban Green Space Planning and Design Networkmentioning
confidence: 99%