“…FRED-MD has been successful. It has been used as a foil for applying big data methods including random subspace methods (Boot and Nibberin, 2019), sufficient dimension reduction (Barbarino and Bura, 2017), dynamic factor models (Stock and Watson, 2016), large Bayesian VARs (Giannone, Lenza, and Primiceri, 2018), various lasso-type regressions (Smeekes and Wijler, 2018), functional principal components, (Hu and Park, 2017), complete subset regression (Kotchoni, Lerous, and Stevanovich, 2019), and random forests (Medeiros, Vasconcelos, Veiga, and Zilberman, 2019). In addition, these various methods have been used to study a wide variety of economic and financial topics including bond risk premia (Bauer and Hamilton, 2017), the presence of real and financial tail risk (Nicolò and Lucchetta, 2016), liquidity shocks (Ellington, Florackis, and Milas, 2017), recession forecasting (Davig and Hall, 2019), identification of uncertainty shocks (Angelini, Bacchiocchi, Caggiano, and Fanelli, 2019), and identification of monetary policy shocks (Miranda-Agrippino and Ricco, 2017).…”