Quantitative Portfolio Management: Review and Outlook

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Michael Senescall, Rand Kwong Yew Low
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Abstract

This survey aims to provide insightful and objective perspectives on the research history of quantitative portfolio management strategies with suggestions for the future of research. The relevant literature can be clustered into four broad themes: portfolio optimization, risk-parity, style integration, and machine learning. Portfolio optimization attempts to find the optimal trade-off of future returns per unit of risk. Risk-parity attempts to match the exposure of various asset classes such that no single asset class dominates portfolio risk. Style integration combines risk factors on a security level such that rebalancing differences cancel out. Finally, machine learning utilizes large arrays of tunable parameters to predict future asset behavior and solve non-convex optimization problems. We conclude that machine learning will likely be the focus of future research.
量化投资组合管理:回顾与展望
本调查旨在对量化投资组合管理策略的研究历史提供有见地的客观观点,并对未来的研究提出建议。相关文献可归纳为四大主题:投资组合优化、风险平价、风格整合和机器学习。投资组合优化试图找到单位风险未来收益的最佳权衡。风险均等试图匹配各类资产的风险敞口,从而避免单一资产类别主导投资组合风险。风格整合在证券层面上结合风险因素,从而消除再平衡差异。最后,机器学习利用大量可调参数阵列来预测未来资产行为,并解决非凸优化问题。我们的结论是,机器学习很可能是未来研究的重点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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