收益
预测能力
计量经济学
逻辑回归
预测建模
随机森林
财务
机器学习
航程(航空)
人工智能
计算机科学
经济
工程类
认识论
哲学
航空航天工程
作者
XI CHEN,YANG HA CHO,Yiwei Dou,Baruch Lev
标识
DOI:10.1111/1475-679x.12429
摘要
ABSTRACT We use machine learning methods and high‐dimensional detailed financial data to predict the direction of one‐year‐ahead earnings changes. Our models show significant out‐of‐sample predictive power: the area under the receiver operating characteristics curve ranges from 67.52% to 68.66%, significantly higher than the 50% of a random guess. The annual size‐adjusted returns to hedge portfolios formed based on the prediction of our models range from 5.02% to 9.74%. Our models outperform two conventional models that use logistic regressions and small sets of accounting variables, and professional analysts’ forecasts. Analyses suggest that the outperformance relative to the conventional models stems from both nonlinear predictor interactions missed by regressions and the use of more detailed financial data by machine learning.
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