Estimating profitability decomposition frameworks via machine learning: Implications for earnings forecasting and financial statement analysis
We find that nonlinear estimation of profitability decomposition frameworks yields more accurate out-of-sample profitability forecasts than forecasts from both a random walk and linear estimation. The improvements derive from nonlinear estimation and synergies between nonlinear estimation and profitability decomposition frameworks. We analyze three essential financial statement analysis design choices to provide insights for the practice of fundamental analysis and find robust evidence that higher levels of profitability decomposition, focusing on core items, and using up to three years of historical information improve forecast accuracy. We find that our forecasts predict returns and profitability changes before and after controlling for analyst forecasts and common asset pricing factors.
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Related Subject Headings
- Accounting
- 3801 Applied economics
- 3502 Banking, finance and investment
- 3501 Accounting, auditing and accountability
- 1502 Banking, Finance and Investment
- 1501 Accounting, Auditing and Accountability
- 1402 Applied Economics
Citation
Published In
DOI
ISSN
Publication Date
Volume
Issue
Related Subject Headings
- Accounting
- 3801 Applied economics
- 3502 Banking, finance and investment
- 3501 Accounting, auditing and accountability
- 1502 Banking, Finance and Investment
- 1501 Accounting, Auditing and Accountability
- 1402 Applied Economics