Next Gen Nowcasting: Signatures, Distributions, and Simplified Workflows
Paper Session
Sunday, Jan. 4, 2026 2:30 PM - 4:30 PM (EST)
- Chair: Arthur Turrell, Bank of England
Mixed Frequency Functional VARs for Nowcasting the Income Distribution in the UK
Abstract
Cross-sectional survey data on the annual income in the UK are released with more than a one-year delay, precluding real-time assessment of the effects of economic developments on inequality. This paper develops a Bayesian mixed-frequency functional Vector Autoregression (MF-fVAR) that jointly models higher-frequency macroeconomic time series with low-frequency micro-data about the annual income distribution. The MF-fVAR facilitates nowcasting and the generation of high-frequency historical estimates of the income distribution informed by developments in key macroeconomic indicators. We show that the model offers several advantages over existing methods, providing more timely and accurate insights into the relationship between macroeconomic conditions and income inequality. The paper also proposes a new way to evaluate density forecasts with functional data realizations. Real-time estimates of the income distribution are essential for effective policymaking, informing the design of timely and targeted fiscal and monetary policies to address economic instability and inequality.Nowcasting Made Easier: A Toolbox for Economists
Abstract
We provide a versatile nowcasting toolbox that supports three model classes (dynamic factor models, large Bayesian VAR, bridge equations) and offers methods to manage data selection and adjust for Covid-19 observations. The toolbox aims at simplifying two key tasks: creating new nowcasting models and improving the policy analysis. For model creation, the toolbox automatizes testing input variables, assessing model accuracy, and checking robustness to the Covid period. The toolbox is organized along a structured three-step approach: variable pre-selection, model selection, and Covid robustness. Non-specialists can easily follow these steps to develop high-performing models, while experts can leverage the automated tests and analyses. For regular policy use, the toolbox generates a large range of outputs to aid conjunctural analysis like news decomposition, confidence bands, alternative forecasts, and heatmaps. These multiple outputs aim at opening the black box often associated with nowcasts and at gauging the reliability of real-time predictions. We showcase the toolbox features to create a nowcasting model for global GDP growth. Overall, the toolbox aims at facilitating creation, evaluation, and deployment of nowcasting models. Code and templates are available on GitHub: https://github.com/baptiste-meunier/Nowcasting_toolbox.Discussant(s)
Chris Kurz
,
Federal Reserve Board
Giulia Mantoan
,
Bank of England
Chad Fulton
,
Federal Reserve Board
JEL Classifications
- C3 - Multiple or Simultaneous Equation Models; Multiple Variables
- E1 - General Aggregative Models