Forecasting Macroeconomic Dynamics using a Calibrated Data-Driven Agent-based Model
In the last few years, economic agent-based models have made the transition from qualitative models calibrated to match stylised facts to quantitative models for time series forecasting, and in some cases, their predictions have performed as well or better than those of standard models (see, e.g. Po...
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Zusammenfassung: | In the last few years, economic agent-based models have made the transition
from qualitative models calibrated to match stylised facts to quantitative
models for time series forecasting, and in some cases, their predictions have
performed as well or better than those of standard models (see, e.g. Poledna et
al. (2023a); Hommes et al. (2022); Pichler et al. (2022)). Here, we build on
the model of Poledna et al., adding several new features such as housing
markets, realistic synthetic populations of individuals with income, wealth and
consumption heterogeneity, enhanced behavioural rules and market mechanisms,
and an enhanced credit market. We calibrate our model for all 38 OECD member
countries using state-of-the-art approximate Bayesian inference methods and
test it by making out-of-sample forecasts. It outperforms both the Poledna and
AR(1) time series models by a highly statistically significant margin. Our
model is built within a platform we have developed, making it easy to build,
run, and evaluate alternative models, which we hope will encourage future work
in this area. |
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DOI: | 10.48550/arxiv.2409.18760 |