Quantifying Drivers of Forecasted Returns Using Approximate Dynamic Factor Models for Mixed-Frequency Panel Data

Monica Defend, Aleksey Min, Lorenzo Portelli, Franz Ramsauer, Francesco Sandrini, Rudi Zagst

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

This article considers the estimation of Approximate Dynamic Factor Models with homoscedastic, cross-sectionally correlated errors for incomplete panel data. In contrast to existing estimation approaches, the presented estimation method comprises two expectation-maximization algorithms and uses conditional factor moments in closed form. To determine the unknown factor dimension and autoregressive order, we propose a two-step information-based model selection criterion. The performance of our estimation procedure and the model selection criterion is investigated within a Monte Carlo study. Finally, we apply the Approximate Dynamic Factor Model to real-economy vintage data to support investment decisions and risk management. For this purpose, an autoregressive model with the estimated factor span of the mixed-frequency data as exogenous variables maps the behavior of weekly S&P500 log-returns. We detect the main drivers of the index development and define two dynamic trading strategies resulting from prediction intervals for the subsequent returns.

Original languageEnglish
Pages (from-to)56-90
Number of pages35
JournalForecasting
Volume3
Issue number1
DOIs
StatePublished - Mar 2021

Keywords

  • approximate dynamic factor model
  • expectation-maximization algorithm
  • forecasting
  • incomplete data
  • mixed-frequency information
  • prediction interval
  • trading strategy
  • vector autoregression

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