机器学习和管理者选择:来自南非的证据

IF 2.7 4区 管理学 Q2 BUSINESS International Journal of Emerging Markets Pub Date : 2023-07-28 DOI:10.1108/ijoem-06-2022-0998
Daniel Page, Yudhvir Seetharam, C. Auret
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摘要

本研究调查了新兴市场中少数熟练的主动股票经理是否可以使用包含大量绩效特征的机器学习(ML)框架来识别。设计/方法/方法本研究使用了2002年1月至2021年12月期间南非主动股票经理的横截面。使用ML模型分析性能特征,特别关注梯度助推器,以及naïve选择技术,如动量和风格alpha。评估了样本外的名义收益、超额收益和风险调整后的收益,并进行了精度测试,以评估业绩预测的准确性。少数主动型基金经理表现出了产生阿尔法的技能,即使在考虑了费用后也是如此。研究结果表明,ML模型,尤其是梯度增强模型,在识别非线性方面更有优势。LightGBM (LG)实现最高的样本外标称,超额和风险调整后的回报,并证明是精度测试中最准确的性能预测器。Naïve选择技术,如动量和风格alpha,在预测新兴市场主动经理绩效方面优于大多数ML模型。原创性/价值作者通过证明一种包含大量绩效特征的机器学习方法可用于识别新兴市场中熟练的主动股票经理,从而为文献做出了贡献。研究结果表明,ML模型和naïve选择技术都可以用于预测性能,但前者在预测事前性能方面更准确。本研究对对新兴市场主动资产管理公司绩效感兴趣的投资从业者和学者具有实际意义。
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Machine learning and manager selection: evidence from South Africa
PurposeThis study investigates whether the skilled minority of active equity managers in emerging markets can be identified using a machine learning (ML) framework that incorporates a large set of performance characteristics.Design/methodology/approachThe study uses a cross-section of South African active equity managers from January 2002 to December 2021. The performance characteristics are analysed using ML models, with a particular focus on gradient boosters, and naïve selection techniques such as momentum and style alpha. The out-of-sample nominal, excess and risk-adjusted returns are evaluated, and precision tests are conducted to assess the accuracy of the performance predictions.FindingsA minority of active managers exhibit skill that results in generating alpha, even after accounting for fees, and show that ML models, particularly gradient boosters, are superior at identifying non-linearities. LightGBM (LG) achieves the highest out-of-sample nominal, excess and risk-adjusted return and proves to be the most accurate predictor of performance in precision tests. Naïve selection techniques, such as momentum and style alpha, outperform most ML models in forecasting emerging market active manager performance.Originality/valueThe authors contribute to the literature by demonstrating that a ML approach that incorporates a large set of performance characteristics can be used to identify skilled active equity managers in emerging markets. The findings suggest that both ML models and naïve selection techniques can be used to predict performance, but the former is more accurate in predicting ex ante performance. This study has practical implications for investment practitioners and academics interested in active asset manager performance in emerging markets.
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来源期刊
CiteScore
5.90
自引率
14.80%
发文量
206
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