反向传播神经网络模型的价格预测

Thura Zaw, Khin Mo Mo Tun, Aung Nway Oo
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引用次数: 5

摘要

通过收集和分析过去和现在的数据来预测未来会发生什么的过程被称为预测。在进行预测时,为了提高预测的准确性,需要从不同的角度构建反向传播神经网络(BPNN)。本文引入了高效、可扩展的bp神经网络预测模型,允许对数据的不同观点融合模型在复杂、精确预测中的响应。为探索模型的应用领域,以缅甸联邦共和国伊洛瓦底省平邦镇大米价格数据集为案例研究。假设影响大米价格和大米产量的四个主要因素作为模型可见层的输入神经元。具有4个输入因子的BPNN模型证明准确率在80%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Price Forecasting by Back Propagation Neural Network Model
The process of predicting what will happen in the future by gathering and analyzing past and current data is referred to as forecasting. When trying to make a good forecasting, Back Propagation Neural Network (BPNN) is constructed with different aspects of viewpoints for the high accuracy of that forecasting. This paper introduces efficient and scalable BPNN model for forecasting, allowing different views on data to fuse the responses of the model in complex and exact forecasting. To exploit the application area of the model, Rice Price Data Set of Pyapon Town in Ayeyarwaddy Division, Republic of the Union of Myanmar was used as case study. Four main factors influenced on rice price and rice production are assumed as input neurons to visible layers of the model. BPNN model with four input factors proves that the accuracy is over 80 percentage.
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