Methods for backcasting, nowcasting and forecasting using factor‐MIDAS: With an application to Korean GDP

We utilize mixed†frequency factor†MIDAS models for the purpose of carrying out backcasting, nowcasting, and forecasting experiments using real†time data. We also introduce a new real†time Korean GDP dataset, which is the focus of our experiments. The methodology that we utilize involves first estimating common latent factors (i.e., diffusion indices) from 190 monthly macroeconomic and financial series using various estimation strategies. These factors are then included, along with standard variables measured at multiple different frequencies, in various factor†MIDAS prediction models. Our key empirical findings as follows. (i) When using real†time data, factor†MIDAS prediction models outperform various linear benchmark models. Interestingly, the “MSFE†best†MIDAS models contain no autoregressive (AR) lag terms when backcasting and nowcasting. AR terms only begin to play a role in “true†forecasting contexts. (ii) Models that utilize only one or two factors are “MSFE†best†at all forecasting horizons, but not at any backcasting and nowcasting horizons. In these latter contexts, much more heavily parametrized models with many factors are preferred. (iii) Real†time data are crucial for forecasting Korean gross domestic product, and the use of “first available†versus “most recent†data “strongly†affects model selection and performance. (iv) Recursively estimated models are almost always “MSFE†best,†and models estimated using autoregressive interpolation dominate those estimated using other interpolation methods. (v) Factors estimated using recursive principal component estimation methods have more predictive content than those estimated using a variety of other (more sophisticated) approaches. This result is particularly prevalent for our “MSFE†best†factor†MIDAS models, across virtually all forecast horizons, estimation schemes, and data vintages that are analyzed.

[1]  Domenico Giannone,et al.  Nowcasting GDP and Inflation: The Real Time Informational Content of Macroeconomic Data Releases , 2005 .

[2]  Alain Hecq,et al.  Combining forecasts from successive data vintages: An application to U.S. growth , 2016 .

[3]  Massimiliano Marcellino,et al.  Midas Vs. Mixed-Frequency VAR: Nowcasting GDP in the Euro Area , 2009 .

[4]  Filippo Altissimo,et al.  New Eurocoin: Tracking Economic Growth in Real Time , 2006, The Review of Economics and Statistics.

[5]  Marco Lippi,et al.  The Generalized Dynamic Factor Model , 2002 .

[6]  E. Ghysels,et al.  Macroeconomics and the Reality of Mixed Frequency Data , 2015 .

[7]  Catherine Doz,et al.  A Quasi–Maximum Likelihood Approach for Large, Approximate Dynamic Factor Models , 2006, Review of Economics and Statistics.

[8]  J. Bai,et al.  Determining the Number of Factors in Approximate Factor Models , 2000 .

[9]  Francesco Ravazzolo,et al.  Density Forecasts with MIDAS Models , 2014 .

[10]  Jeremy Piger,et al.  The Use and Abuse of 'Real-Time' Data in Economic Forecasting , 2000 .

[11]  Eric Ghysels,et al.  Série Scientifique Scientific Series the Midas Touch: Mixed Data Sampling Regression Models the Midas Touch: Mixed Data Sampling Regression Models* , 2022 .

[12]  F. Ravazzolo,et al.  Density Forecasts With Midas Models: DENSITY FORECASTS WITH MIDAS MODELS , 2017 .

[13]  Mark W. Watson,et al.  Generalized Shrinkage Methods for Forecasting Using Many Predictors , 2012 .

[14]  Alessandro Girardi,et al.  The role of indicator selection in nowcasting euro-area GDP in pseudo-real time , 2017 .

[15]  Dean Croushore,et al.  A real-time data set for macroeconomists , 2001 .

[16]  Barbara Guardabascio,et al.  A Medium-N Approach to Macroeconomic Forecasting , 2010 .

[17]  Christian Schumacher,et al.  Forecasting German GDP Using Alternative Factor Models Based on Large Datasets , 2007, SSRN Electronic Journal.

[18]  Leif Anders Thorsrud,et al.  Nowcasting GDP in Real Time: A Density Combination Approach , 2014 .

[19]  Gerhard Rünstler,et al.  Short-Term Estimates of Euro Area Real GDP by Means of Monthly Data , 2003, SSRN Electronic Journal.

[20]  Tom Stark and Dean Croushore Forecasting with a Real-Time Data Set for Macroeconomists , 2001 .

[21]  A. Timmermann Chapter 4 Forecast Combinations , 2006 .

[22]  J. Stock,et al.  Forecasting Using Principal Components From a Large Number of Predictors , 2002 .

[24]  Serena Ng,et al.  Understanding and Comparing Factor-Based Forecasts , 2005 .

[25]  R. Golinelli,et al.  Bridge models to forecast the euro area GDP , 2004 .

[26]  F. Diebold,et al.  Comparing Predictive Accuracy , 1994, Business Cycles.

[27]  Audrone Jakaitiene,et al.  Short-term forecasting of GDP using large monthly datasets - A pseudo real-time forecast evaluation exercise. NBB Working Papers. No. 133, 17 June 2008 , 2008 .

[28]  Massimiliano Marcellino,et al.  Factor Midas for Nowcasting and Forecasting with Ragged-Edge Data: A Model Comparison for German GDP , 2008 .

[29]  Massimiliano Marcellino,et al.  Unrestricted mixed data sampling (MIDAS): MIDAS regressions with unrestricted lag polynomials , 2015 .

[30]  Isabel Yi Zheng,et al.  Using Monthly Indicators to Predict Quarterly GDP , 2006 .

[31]  Frank Schorfheide,et al.  Real-Time Forecasting With a Mixed-Frequency VAR , 2013 .

[32]  Jörg Breitung,et al.  Real-Time Forecasting of GDP Based on a Large Factor Model with Monthly and Quarterly Data , 2007, SSRN Electronic Journal.

[33]  James Mitchell,et al.  Density Nowcasts and Model Combination: Nowcasting Euro‐Area GDP Growth Over the 2008–09 Recession , 2014 .

[34]  A. Timmermann,et al.  A Bayesian MIDAS Approach to Modeling First and Second Moment Dynamics , 2014 .

[35]  Hyun Hak Kim Looking into the black box of the Korean economy: the sparse factor model approach1 , 2018 .

[36]  Roberto Golinelli,et al.  Short-Run Italian GDP Forecasting and Real-Time Data , 2005 .

[37]  Norman R. Swanson,et al.  Are Statistical Reporting Agencies Getting It Right? Data Rationality and Business Cycle Asymmetry , 2001 .

[38]  J. Bai,et al.  Forecasting economic time series using targeted predictors , 2008 .

[39]  Deniz Erdogmus,et al.  Recursive Principal Components Analysis Using Eigenvector Matrix Perturbation , 2004, Proceedings of the 2004 14th IEEE Signal Processing Society Workshop Machine Learning for Signal Processing, 2004..

[40]  Riccardo Cristadoro,et al.  Short-Term Forecasting of GDP Using Large Monthly Datasets – A Pseudo Real-Time Forecast Evaluation Exercise , 2008 .

[41]  Norman R. Swanson,et al.  Mining Big Data Using Parsimonious Factor and Shrinkage Methods , 2013 .

[42]  David H. Small,et al.  Nowcasting: the real time informational content of macroeconomic data releases , 2008 .

[43]  Hyun Hak Kim Forecasting Macroeconomic Variables Using Data Dimension Reduction Methods: The Case of Korea , 2013 .

[44]  Michael P. Clements,et al.  Forecasting US output growth using leading indicators: an appraisal using MIDAS models , 2009 .

[45]  C. Wetzel,et al.  The Midas Touch , 1984 .

[46]  Michael P. Clements,et al.  Macroeconomic Forecasting With Mixed-Frequency Data , 2008 .

[47]  Kenneth F. Wallis,et al.  Forecasting with an econometric model: The ‘ragged edge’ problem† , 1986 .

[48]  Michele Modugno,et al.  Maximum Likelihood Estimation of Factor Models on Data Sets with Arbitrary Pattern of Missing Data , 2010, SSRN Electronic Journal.

[49]  Deniz Erdogmus,et al.  Recursive principal components analysis using eigenvector matrix perturbation , 2004 .

[50]  Laurent Ferrara,et al.  Financial variables as leading indicators of GDP growth: Evidence from a MIDAS approach during the Great Recession , 2013 .

[51]  Christian Schumacher,et al.  POOLING VERSUS MODEL SELECTION FOR NOWCASTING GDP WITH MANY PREDICTORS: EMPIRICAL EVIDENCE FOR SIX INDUSTRIALIZED COUNTRIES , 2013 .