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This article announces the release of a Python toolkit for implementing Shadow-Rate Vector Autoregressions with Stochastic Volatility. The focus is on providing a practical tool for researchers and practitioners in finance and econometrics to model and analyze financial time series data, particularly those involving shadow interest rates and volatility. The toolkit's availability on ArXiv suggests it's a pre-print or working paper, indicating ongoing research and development.
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