Using singular spectrum analysis for inference on seasonal time series with seasonal unit roots

IF 0.4 Q4 ECONOMICS
D. Thomakos, Hossein Hassani
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引用次数: 1

Abstract

The problem of optimal linear filtering, smoothing and trend extraction for m-period differences of processes with a unit root is studied. Such processes arise naturally in economics and finance, in the form of rates of change (price inflation, economic growth, financial returns) and finding an appropriate smoother is thus of immediate practical interest. The filter and resulting smoother are based on the methodology of singular spectrum analysis (SSA). An explicit representation for the asymptotic decomposition of the covariance matrix is obtained. The structure of the impulse and frequency response functions indicates that the optimal filter has a 'permanent' and a 'transitory component', with the corresponding smoother being the sum of two such components. Moreover, a particular form for the extrapolation coefficients that can be used in out-of-sample prediction is proposed. In addition, an explicit representation for the filtering weights in the context of SSA for an arbitrary covariance matrix is derived. This result allows one to examine the specific effects of smoothing in any situation. The theoretical results are illustrated using different datasets, namely US inflation and real GDP growth.
奇异谱分析在具有季节单位根的季节时间序列推断中的应用
研究了具有单位根的过程的m周期差的最优线性滤波、平滑和趋势提取问题。这种过程在经济学和金融学中自然产生,表现为变化率(价格通胀、经济增长、金融回报),因此,找到一个合适的更平稳的过程具有直接的实际意义。滤波器和由此产生的平滑器基于奇异谱分析(SSA)的方法。得到了协方差矩阵渐近分解的显式表示。脉冲和频率响应函数的结构表明,最佳滤波器具有“永久”和“瞬态分量”,相应的平滑器是两个此类分量的总和。此外,还提出了一种可用于样本外预测的外推系数的特殊形式。此外,对于任意协方差矩阵,导出了SSA上下文中滤波权重的显式表示。这一结果使人们能够在任何情况下检查平滑的具体效果。理论结果使用不同的数据集进行了说明,即美国通货膨胀和实际GDP增长。
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来源期刊
CiteScore
0.60
自引率
0.00%
发文量
26
期刊介绍: IJCEE explores the intersection of economics, econometrics and computation. It investigates the application of recent computational techniques to all branches of economic modelling, both theoretical and empirical. IJCEE aims at an international and multidisciplinary standing, promoting rigorous quantitative examination of relevant economic issues and policy analyses. The journal''s research areas include computational economic modelling, computational econometrics and statistics and simulation methods. It is an internationally competitive, peer-reviewed journal dedicated to stimulating discussion at the forefront of economic and econometric research. Topics covered include: -Computational Economics: Computational techniques applied to economic problems and policies, Agent-based modelling, Control and game theory, General equilibrium models, Optimisation methods, Economic dynamics, Software development and implementation, -Econometrics: Applied micro and macro econometrics, Monte Carlo simulation, Robustness and sensitivity analysis, Bayesian econometrics, Time series analysis and forecasting techniques, Operational research methods with applications to economics, Software development and implementation.
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