Interpretable Deep Learning for Stock Returns: A Consensus-Bottleneck Asset Pricing Model
By: Bong-Gyu Jang, Younwoo Jeong, Changeun Kim
Potential Business Impact:
Predicts stock prices by understanding how people agree.
We introduce the \textit{Consensus-Bottleneck Asset Pricing Model} (CB-APM), a partially interpretable neural network that replicates the reasoning processes of sell-side analysts by capturing how dispersed investor beliefs are compressed into asset prices through a consensus formation process. By modeling this ``bottleneck'' to summarize firm- and macro-level information, CB-APM not only predicts future risk premiums of U.S. equities but also links belief aggregation to expected returns in a structurally interpretable manner. The model improves long-horizon return forecasts and outperforms standard deep learning approaches in both predictive accuracy and explanatory power. Comprehensive portfolio analyses show that CB-APM's out-of-sample predictions translate into economically meaningful payoffs, with monotonic return differentials and stable long-short performance across regularization settings. Empirically, CB-APM leverages consensus as a regularizer to amplify long-horizon predictability and yields interpretable consensus-based components that clarify how information is priced in returns. Moreover, regression and GRS-based pricing diagnostics reveal that the learned consensus representations capture priced variation only partially spanned by traditional factor models, demonstrating that CB-APM uncovers belief-driven structure in expected returns beyond the canonical factor space. Overall, CB-APM provides an interpretable and empirically grounded framework for understanding belief-driven return dynamics.
Similar Papers
The Uncertainty of Machine Learning Predictions in Asset Pricing
Econometrics
Shows how much money investments might earn.
Deep Learning for Conditional Asset Pricing Models
Computational Finance
Helps predict stock prices better for more money.
Partially Shared Concept Bottleneck Models
CV and Pattern Recognition
Makes AI explain its decisions clearly and accurately.