Working paper

Information Aggregation with Asymmetric Asset Payoffs

Elias Albagli, Christian Hellwig, and Aleh Tsyvinski

Abstract

We study noisy aggregation of dispersed information in financial markets without imposing parametric restrictions on preferences, information, and return distributions. We provide a gen-eral characterization of asset returns by means of a risk-neutral probability measure that features excess weight on tail risks. Moreover, we link excess weight on tail risks to observable moments such as forecast dispersion and accuracy, and argue that it provides a unified explanation for several prominent cross-sectional return anomalies. Simple calibrations suggest the model can account for a significant fraction of empirical returns to skewness, returns to disagreement and interaction effects between the two.

Replaced by

Elias Albagli, Christian Hellwig, and Aleh Tsyvinski, Information Aggregation with Asymmetric Asset Payoffs, The Journal of Finance, vol. 79, n. 4, August 2024, pp. 2715–2758.

Reference

Elias Albagli, Christian Hellwig, and Aleh Tsyvinski, Information Aggregation with Asymmetric Asset Payoffs, TSE Working Paper, n. 21-1172, January 2021, revised April 2023.

See also

Published in

TSE Working Paper, n. 21-1172, January 2021, revised April 2023