Nowcasting and the Need for Timely Estimates of Movements in Irish Output
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Cited by:
- Conefrey, Thomas & Walsh, Graeme, 2018. "A Monthly Indicator of Economic Activity for Ireland," Economic Letters 14/EL/18, Central Bank of Ireland.
- Conroy, Niall, 2015. "Irish Quarterly Macroeconomic Data: A Volatility Analysis," Research Notes RN2015/2/1, Economic and Social Research Institute (ESRI).
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