Authors:
(1) Pham Hoang Van, Department of Economics, Baylor University Waco, TX, USA (Van Pham@baylor.edu);
(2) Scott Cunningham, Department of Economics, Baylor University Waco, TX, USA (Scott Cunningham@baylor.edu).
2 Direct vs Narrative Prediction
3 Prompting Methodology and Data Collection
4 Results
4.1 Establishing the Training Data Limit with Falsifications
4.2 Results of the 2022 Academy Awards Forecasts
5 Predicting Macroeconomic Variables
5.1 Predicting Inflation with an Economics Professor
5.2 Predicting Inflation with a Jerome Powell, Fed Chair
5.3 Predicting Inflation with Jerome Powell and Prompting with Russia’s Invasion of Ukraine
5.4 Predicting Unemployment with an Economics Professor
6 Conjecture on ChatGPT-4’s Predictive Abilities in Narrative Form
7 Conclusion and Acknowledgments
Appendix
A. Distribution of Predicted Academy Award Winners
B. Distribution of Predicted Macroeconomic Variables
Detailed figures illustrating the distribution of predicted winners for each Academy Award category, using the four prompting styles, are provided here. These figures showcase the improved accuracy of GPT-4 in predicting winners when prompted with a future narrative.
This paper is available on arxiv under CC BY 4.0 DEED license.