基于神经网络拐点预测的经济周期非对称验证

Dabin Zhang, Haibin Xie
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摘要

本文研究了各种金融和经济指标在通过神经网络(NN)模型预测商业周期转折点中的相关性。本文采用前馈神经网络模型对中国经济周期拐点进行预测。神经网络的输入是13个经济活动指标,输出是衰退的概率。这些不同的指标是根据预测中国经济衰退的有效性进行排名的。外样本结果表明,通过神经网络模型,钢铁产量、M2、生铁产量和全社会货运量等指标对预测中国经济衰退有一定的帮助。同时,利用该方法可以验证经济周期的不对称性。
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Asymmetric Verification of Business Cycle by Forecasting Turning Points Based on Neural Networks
This paper examines the relevance of various financial and economic indicators in forecasting business cycle turning points via neural networks (NN) models. We employ a feed forward neural network model to forecast turning points in the business cycle of China. The NN has as inputs thirteen indicators of economic activity and as output the probability of a recession. The different indicators are ranked in terms of their effectiveness of predicting China recessions. The out-of-sample results show that via the NN model indicators, such as steel output, M2, Pig iron yield and freight volume of whole society are useful in forecasting China recessions. Meanwhile, based on this method, asymmetry of business cycle can be verified.
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