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Prediction of Gross Domestic Product (GDP) in Indonesia Using Deep Learning Algorithm

机译:利用深度学习算法预测印度尼西亚国内生产总值(GDP)

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Growth Domestic Product (GDP) is the important factor to know the stability of financial condition in a country. Regarding into GDP value could be known the economic condition per capita. Especially, during this pandemic situation, GDP need study further about its sudden fluctuation. The solution can be covered using the prediction approach. Deep learning as new method from machine learning schema had been observed in this research to cope the prediction of GDP problem. Two methods of deep learning techniques that were used, LSTM and RNN, shown that the prediction could fit the data actual very well. The accuracy at around 80% until 90% emerge from LSTM architecture 2 and RNN architecture 2. Based on this result, it could bring new perspective to use this model to know the GDP fluctuation in a country even in catastrophe of Covid-19.
机译:成长国内产品(GDP)是了解一个国家财务状况稳定的重要因素。关于GDP价值可以是人均经济状况。特别是,在这种大流行情况下,GDP需要进一步研究其突然波动。可以使用预测方法覆盖解决方案。在这项研究中观察到从机器学习模式的新方法进行深入学习,以应对GDP问题的预测。使用的深度学习技术的两种方法,LSTM和RNN,表明预测可以非常好地适应数据。从LSTM架构2和RNN架构中出现了大约80%的准确性。基于这一结果,它可以带来新的视角来,使用该模型即使在Covid-19的灾难中也知道一个国家的GDP波动。

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