Commentary on "Transparent modelling of influenza incidence": Is the answer simplicity or adaptability?
In: International journal of forecasting, Band 38, Heft 2, S. 622-624
ISSN: 0169-2070
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In: International journal of forecasting, Band 38, Heft 2, S. 622-624
ISSN: 0169-2070
In: Journal of economics, Band 117, Heft 1, S. 89-91
ISSN: 1617-7134
In: Journal of economic dynamics & control, Band 128, S. 104139
ISSN: 0165-1889
In: Palgrave Texts in Econometrics
This open access book focuses on the concepts, tools and techniques needed to successfully model ever-changing time-series data. It emphasizes the need for general models to account for the complexities of the modern world and how these can be applied to a range of issues facing Earth, from modelling volcanic eruptions, carbon dioxide emissions and global temperatures, to modelling unemployment rates, wage inflation and population growth. Except where otherwise noted, this book is licensed under a Creative Commons Attribution 4.0 International License. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0.
In: International journal of forecasting
ISSN: 0169-2070
In: International journal of forecasting, Band 38, Heft 2, S. 453-466
ISSN: 0169-2070
In: International journal of forecasting, Band 37, Heft 4, S. 1556-1575
ISSN: 0169-2070
In: Social science quarterly, Band 102, Heft 5, S. 2070-2087
ISSN: 1540-6237
AbstractObjectiveWe analyze the number of recorded cases and deaths of COVID‐19 in many parts of the world, with the aim to understand the complexities of the data, and produce regular forecasts.MethodsThe SARS‐CoV‐2 virus that causes COVID‐19 has affected societies in all corners of the globe but with vastly differing experiences across countries. Health‐care and economic systems vary significantly across countries, as do policy responses, including testing, intermittent lockdowns, quarantine, contact tracing, mask wearing, and social distancing. Despite these challenges, the reported data can be used in many ways to help inform policy. We describe how to decompose the reported time series of confirmed cases and deaths into a trend, seasonal, and irregular component using machine learning methods.ResultsThis decomposition enables statistical computation of measures of the mortality ratio and reproduction number for any country, and we conduct a counterfactual exercise assuming that the United States had a summer outcome in 2020 similar to that of the European Union. The decomposition is also used to produce forecasts of cases and deaths, and we undertake a forecast comparison which highlights the importance of seasonality in the data and the difficulties of forecasting too far into the future.ConclusionOur adaptive data‐based methods and purely statistical forecasts provide a useful complement to the output from epidemiological models.
In: National Institute economic review: journal of the National Institute of Economic and Social Research, Band 256, S. 19-43
ISSN: 1741-3036
The Covid-19 pandemic has put forecasting under the spotlight, pitting epidemiological models against extrapolative time-series devices. We have been producing real-time short-term forecasts of confirmed cases and deaths using robust statistical models since 20 March 2020. The forecasts are adaptive to abrupt structural change, a major feature of the pandemic data due to data measurement errors, definitional and testing changes, policy interventions, technological advances and rapidly changing trends. The pandemic has also led to abrupt structural change in macroeconomic outcomes. Using the same methods, we forecast aggregate UK unemployment over the pandemic. The forecasts rapidly adapt to the employment policies implemented when the UK entered the first lockdown. The difference between our statistical and theory based forecasts provides a measure of the effect of furlough policies on stabilising unemployment, establishing useful scenarios had furlough policies not been implemented.
In: International journal of forecasting, Band 36, Heft 1, S. 129-134
ISSN: 0169-2070
In: International journal of forecasting, Band 31, Heft 1, S. 99-112
ISSN: 0169-2070
In: National Institute economic review: journal of the National Institute of Economic and Social Research, Band 210, S. 71-89
ISSN: 1741-3036
We consider the reasons for nowcasting, the timing of information and sources thereof, especially contemporaneous data, which introduce different aspects compared to forecasting. We allow for the impact of location shifts inducing nowcast failure and nowcasting during breaks, probably with measurement errors. We also apply a variant of the nowcasting strategy proposed in Castle and Hendry (2009) to nowcast Euro Area GDP growth. Models of disaggregate monthly indicators are built by automatic methods, forecasting all variables that are released with a publication lag each period, then testing for shifts in available measures including survey data, switching to robust forecasts of missing series when breaks are detected.
In: International journal of forecasting, Band 38, Heft 3, S. 705-871
ISSN: 0169-2070