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Forecasting Government Bond Yields with Neural Networks Considering Cointegration

机译:考虑协整的神经网络预测政府债券收益率

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摘要

This paper discusses techniques that might be helpful in predicting interest rates and tries to evaluate a new hybrid forecasting approach. Results of examining government bond yields in Germany and France reported in this study indicate that a hybrid forecasting approach which combines techniques of cointegration analysis with neural network (NN) forecasting models can produce superior results to the use of NN forecasting models alone. The findings documented in this paper could be a consequence of the fact that examining differenced data under certain conditions will lead to a loss of information and that the inclusion of the error correction term from the cointegration model can help to cope with this problem. The paper also discusses some possibly interesting directions for further research. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:本文讨论了可能有助于预测利率的技术,并尝试评估一种新的混合预测方法。这项研究中对德国和法国政府债券收益率进行检查的结果表明,将协整分析技术与神经网络(NN)预测模型相结合的混合预测方法可以产生比仅使用NN预测模型更好的结果。本文记录的发现可能是由于以下事实:在某些条件下检查差异数据将导致信息丢失,并且将协整模型中的错误校正项包括在内将有助于解决此问题。本文还讨论了进一步研究的一些可能有趣的方向。版权所有(c)2015 John Wiley&Sons,Ltd.

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