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Factor extraction using Kalman filter and smoothing: This is not just another survey

Pilar Poncela, Esther Ruiz, Karen Miranda

2021International Journal of Forecasting30 citationsDOIOpen Access PDF

Abstract

Dynamic factor models have been the main “big data” tool used by empirical macroeconomists during the last 30 years. In this context, Kalman filter and smoothing (KFS) procedures can cope with missing data, mixed frequency data, time-varying parameters, non-linearities, non-stationarity, and many other characteristics often observed in real systems of economic variables. The main contribution of this paper is to provide a comprehensive updated summary of the literature on latent common factors extracted using KFS procedures in the context of dynamic factor models, pointing out their potential limitations. Signal extraction and parameter estimation issues are separately analyzed. Identification issues are also tackled in both stationary and non-stationary models. Finally, empirical applications are surveyed in both cases. This survey is relevant to researchers and practitioners interested not only in the theory of KFS procedures for factor extraction in dynamic factor models but also in their empirical application in macroeconomics and finance.

Topics & Concepts

SmoothingKalman filterContext (archaeology)EconometricsDynamic factorComputer scienceIdentification (biology)Factor analysisFilter (signal processing)Extended Kalman filterEstimationFactor (programming language)Ensemble Kalman filterMathematicsEconomicsArtificial intelligenceManagementPaleontologyProgramming languageBotanyComputer visionBiologyStatistical and numerical algorithmsAdvanced Statistical Methods and ModelsForecasting Techniques and Applications
Factor extraction using Kalman filter and smoothing: This is not just another survey | Litcius