揭示宏观经济政策的影响:分析利率对金融市场影响的双重机器学习方法

Anoop Kumar, Suresh Dodda, Navin Kamuni, Rajeev Kumar Arora
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引用次数: 0

摘要

本研究采用机器学习 (ML) 技术与因果推理相结合的新方法,研究了宏观经济政策对金融市场的影响。研究重点是 1986 年 1 月至 2021 年 12 月期间美国联邦储备系统(FRS)的利率变化对固定收益基金和股票基金收益的影响。分析区分了主动管理基金和被动管理基金,假设后者不易受利率变化的影响。研究使用支持多种统计学习技术的双重机器学习(DML)框架,对梯度提升模型和线性回归模型进行了对比。结果表明,梯度提升是预测基金收益的有用工具;例如,利率上升 1%,主动管理基金的收益就会下降-11.97%。对利率与基金业绩之间关系的这种理解为开展更多研究以及为基金经理和投资者提供有见地、以数据为导向的建议提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling the Impact of Macroeconomic Policies: A Double Machine Learning Approach to Analyzing Interest Rate Effects on Financial Markets
This study examines the effects of macroeconomic policies on financial markets using a novel approach that combines Machine Learning (ML) techniques and causal inference. It focuses on the effect of interest rate changes made by the US Federal Reserve System (FRS) on the returns of fixed income and equity funds between January 1986 and December 2021. The analysis makes a distinction between actively and passively managed funds, hypothesizing that the latter are less susceptible to changes in interest rates. The study contrasts gradient boosting and linear regression models using the Double Machine Learning (DML) framework, which supports a variety of statistical learning techniques. Results indicate that gradient boosting is a useful tool for predicting fund returns; for example, a 1% increase in interest rates causes an actively managed fund's return to decrease by -11.97%. This understanding of the relationship between interest rates and fund performance provides opportunities for additional research and insightful, data-driven advice for fund managers and investors
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