"Forecasting earnings with combination of analyst forecasts" by Hai Lin, Xinyuan Tao et al.
 

Forecasting earnings with combination of analyst forecasts

Document Type

Article

Publication Date

9-1-2022

Abstract

We propose a regression-based method for combining analyst forecasts to improve forecasting efficiency. This method significantly reduces the bias in earnings forecasts, and generates forecasts that consistently outperform consensus forecasts over time and across firms of different characteristics. Incorporating firm-level and macroeconomic information in the model further improves earnings forecasting performance. Forecasting gains increase with the dispersion and bias of analyst forecasts, and the degree of under/overreactions to earnings news. Moreover, the combination forecast produces larger earnings response coefficients, weakens the anomaly of post-earnings-announcement drift, and provides a better expected profitability measure that has higher power to predict stock returns.

Identifier

85134551318 (Scopus)

Publication Title

Journal of Empirical Finance

External Full Text Location

https://doi.org/10.1016/j.jempfin.2022.07.003

ISSN

09275398

First Page

133

Last Page

159

Volume

68

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