Capturing dynamics of post-earnings-announcement drift using genetic algorithm-optimised supervised learning
Zhengxin Joseph Ye, Bjorn W. Schuller

TL;DR
This paper employs a machine learning approach, specifically XGBoost optimized by a genetic algorithm, to analyze and predict the post-earnings-announcement drift across various sectors, demonstrating improved forecasting and portfolio strategies.
Contribution
It introduces the first application of XGBoost to study PEAD dynamics and shows how genetic algorithm optimization enhances stock portfolio allocation based on PEAD signals.
Findings
XGBoost effectively predicts PEAD direction across sectors.
Genetic algorithm optimization improves portfolio returns.
Market-neutral strategies can be developed using PEAD predictions.
Abstract
While Post-Earnings-Announcement Drift (PEAD) is one of the most studied stock market anomalies, the current literature is often limited in explaining this phenomenon by a small number of factors using simpler regression methods. In this paper, we use a machine learning based approach instead, and aim to capture the PEAD dynamics using data from a large group of stocks and a wide range of both fundamental and technical factors. Our model is built around the Extreme Gradient Boosting (XGBoost) and uses a long list of engineered input features based on quarterly financial announcement data from 1,106 companies in the Russell 1000 index between 1997 and 2018. We perform numerous experiments on PEAD predictions and analysis and have the following contributions to the literature. First, we show how Post-Earnings-Announcement Drift can be analysed using machine learning methods and…
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Taxonomy
TopicsFinancial Markets and Investment Strategies · Stock Market Forecasting Methods · Energy Load and Power Forecasting
