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Predicting interest rates using shrinkage methods, real-time diffusion indexes, and model combinations

机译:使用收缩方法,实时扩散指标和模型组合预测利率

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In the context of predicting the term structure of interest rates, we explore the marginal predictive content of real-time macroeconomic diffusion indexes extracted from a "data rich" real-time data set, when used in dynamic Nelson-Siegel (NS) models of the variety discussed in Svensson (NBER technical report, 1994; NSS) and Diebold and Li (Journal of Econometrics, 2006,130, 337-364; DNS). Our diffusion indexes are constructed using principal component analysis with both targeted and untargeted predictors, with targeting done using the lasso and elastic net. Our findings can be summarized as follows. First, the marginal predictive content of real-time diffusion indexes is significant for the preponderance of theindividualmodels that we examine. The exception to this finding is the post "Great Recession" period. Second, forecastcombinationsthat include only yield variables result in our most accurate predictions, for most sample periods and maturities. In this case, diffusion indexes do not have marginal predictive content for yields and do not seem to reflect unspanned risks. This points to the continuing usefulness of DNS and NSS models that are purely yield driven. Finally, we find that the use of fully revised macroeconomic data may have an important confounding effect upon results obtained when forecasting yields, as prior research has indicated that diffusion indexes are often useful for predicting yields when constructed using fully revised data, regardless of whether forecast combination is used, or not. Nevertheless, our findings also underscore the potential importance of using machine learning, data reduction, and shrinkage methods in contexts such as term structure modeling.
机译:在预测利率术语结构的背景下,我们探讨了从“数据丰富”的实时数据集中提取的实时宏观经济扩散指标的边际预测内容,当使用动态Nelson-Siegel(NS)模型时Svensson(Nber技术报告,1994年)和Diebold和Li(Moverualetrics,2006,130,337-364; DNS)中讨论的品种。我们的扩散指标使用主成分分析与针对目标和未确定的预测因子进行构建,使用套索和弹性网完成靶向。我们的研究结果可以如下综述。首先,实时扩散指标的边际预测内容对于我们检查的IndividualModels的优势是显着的。这个发现的例外是“巨大衰退”期间。其次,预测CombinationSthat仅包括屈服变量导致我们最准确的预测,适用于大多数样本期和到期日。在这种情况下,扩散指标没有产生的边缘预测含量,并且似乎没有反映未扫描的风险。这指出了DNS和NSS模型的持续有用性,这些模型纯粹产生了驱动。最后,我们发现使用完全修订的宏观经济数据可能具有重要的混淆效应,在预测产量时获得的结果,如先前的研究表明,由于无论是否预测,扩散指数通常用于预测产量,无论是否预测使用组合,与否。尽管如此,我们的调查结果也强调了在术语结构建模等上下文中使用机器学习,数据减少和收缩方法的潜在重要性。

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