A Nontrivial Upper Bound on the Out-of-Sample R2 in Return Forecasting
Abstract
This study establishes a nontrivial upper bound on the out-of-sample R2 (R2OOS) in return forecasting. In particular, we define a coin-flip oracle model that, under the same directional accuracy, theoretically outperforms practical models in terms of MSE. The R2OOS of the oracle model, whose analytical expression is a quadratic function of directional accuracy, can therefore serve as a tractable upper bound on the actual R2OOS. Empirical analyses across multiple forecasting scenarios reveal that the R2OOS values of common predictive models are fundamentally bounded by this quadratic function.
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