Book contents
- Ethics in Econometrics
- Ethics in Econometrics
- Copyright page
- Contents
- Figures
- Tables
- Preface
- Acknowledgments
- Recommended Reading
- Introduction
- 1 Ethical Guidelines
- 2 Scientific Misconduct
- 3 Influential Observations
- 4 Model Selection
- 5 Estimation and Interpretation
- 6 Missing Data
- 7 Spurious Relations
- 8 Blinded by the Data
- 9 Predictability
- 10 Adjustment of Forecasts
- 11 Big Data
- 12 Algorithms
- Conclusion
- Index
9 - Predictability
Published online by Cambridge University Press: 14 November 2024
- Ethics in Econometrics
- Ethics in Econometrics
- Copyright page
- Contents
- Figures
- Tables
- Preface
- Acknowledgments
- Recommended Reading
- Introduction
- 1 Ethical Guidelines
- 2 Scientific Misconduct
- 3 Influential Observations
- 4 Model Selection
- 5 Estimation and Interpretation
- 6 Missing Data
- 7 Spurious Relations
- 8 Blinded by the Data
- 9 Predictability
- 10 Adjustment of Forecasts
- 11 Big Data
- 12 Algorithms
- Conclusion
- Index
Summary
This chapter opens with some quotes and insights on megaprojects. We turn to the construction and the use of prediction intervals in a time series context. We see that depending on the choice of the number of unit roots (stochastic trends) or the sample size (when does the sample start?), we can compute a wide range of prediction intervals. Next, we see that those trends, and breaks in levels and breaks in trend, can yield a wide variety of forecasts. Again, we reiterate that maintaining a variety of models and outcomes is useful, and that an equal-weighted combination of results can be most appropriate. Indeed, any specific choice leads to a different outcome. Finally, we discuss for a simple first-order autoregression how you can see what the limits to predictability are. We see that these limits are closer than we may think at the onset.
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- Ethics in EconometricsA Guide to Research Practice, pp. 211 - 231Publisher: Cambridge University PressPrint publication year: 2024