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首页> 外文期刊>Journal of applied statistics >Forecasting interest rates: a comparative assessment of some second-generation nonlinear models
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Forecasting interest rates: a comparative assessment of some second-generation nonlinear models

机译:预测利率:一些第二代非线性模型的比较评估

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Modeling and forecasting of interest rates has traditionally proceeded in the framework of linear stationary methods such as ARMA and VAR, but only with moderate success. We examine here three methods, which account for several specific features of the real world asset prices such as nonstationarity and nonlinearity. Our three candidate methods are based, respectively, on a combined wavelet artificial neural network (WANN) analysis, a mixed spectrum (MS) analysis and nonlinear ARMA models with Fourier coefficients (FNLARMA). These models are applied to weekly data on interest rates in India and their forecasting performance is evaluated vis-a-vis three GARCH models [GARCH (1,1), GARCH-M (1,1) and EGARCH (1,1)] as well as the random walk model. Both the WANN and MS methods show marked improvement over other benchmark models, and may thus hold out several potentials for real world modeling and forecasting of financial data.
机译:利率的建模和预测传统上是在线性平稳方法(例如ARMA和VAR)的框架内进行的,但仅取得了一定的成功。我们在这里检查三种方法,它们解释了现实世界资产价格的几个特定特征,例如非平稳性和非线性。我们的三种候选方法分别基于组合的小波人工神经网络(WANN)分析,混合频谱(MS)分析和具有傅里叶系数的非线性ARMA模型(FNLARMA)。这些模型应用于印度的每周利率数据,并针对三种GARCH模型[GARCH(1,1),GARCH-M(1,1)和EGARCH(1,1))评估了其预测效果。以及随机游走模型WANN和MS方法均显示出相对于其他基准模型的显着改进,因此可能为现实世界中的财务数据建模和预测提供一些潜力。

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