开放式基金
共同基金
经理人基金经理
基金管理
封闭式基金
动量(技术分析)
基金基金
目标日期基金
收益基金
业务
财务
经济
机构投资者
公司治理
市场流动性
作者
Ron Kaniel,Zihan Lin,Markus Pelger,Stijn Van Nieuwerburgh
标识
DOI:10.1016/j.jfineco.2023.07.004
摘要
We show, using machine learning, that fund characteristics can consistently differentiate high from low-performing mutual funds, before and after fees. The outperformance persists for more than three years. Fund momentum and fund flow are the most important predictors of future risk-adjusted fund performance, while characteristics of the stocks that funds hold are not predictive. Returns of predictive long-short portfolios are higher following a period of high sentiment. Our estimation with neural networks enables us to uncover novel and substantial interaction effects between sentiment and both fund flow and fund momentum.
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