基于机器学习方法的黄金风险溢价估计

IF 3.7 4区 经济学 Q1 BUSINESS, FINANCE
Juan D. Díaz , Erwin Hansen , Gabriel Cabrera
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引用次数: 0

摘要

本文评估了几个机器学习模型在使用186个预测因子时对黄金风险溢价预测的准确性。我们进行样本外评估,同时考虑统计和投资组合指标。我们的结果表明,在预测黄金风险溢价时,机器学习方法和预测组合的表现优于历史平均值的能力有限。单独使用预测因子可以获得稍好的结果。更具体地说,我们发现几个技术指标(移动平均线和动量序列)在扩张时期具有预测能力,而几个商业周期变量和地缘政治风险变量有助于预测衰退期间的黄金风险溢价。对交易成本的经济评估表明,使用机器学习方法估计黄金预期回报的投资者应该预期有限的投资组合收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gold risk premium estimation with machine learning methods

This paper assesses the accuracy of several machine learning models’ predictions of the gold risk premium when using an extensive set of 186 predictors. We perform an out-of-sample evaluation and consider both statistical and portfolio metrics. Our results show that machine learning methods and forecast combinations have a limited ability to outperform the historical mean when predicting the gold risk premium. Slightly better results are obtained when predictors are used individually. More specifically, we find that several technical indicators (moving average and momentum series) have forecasting power during periods of expansion, while several business cycle variables and geopolitical risk variables help predict the gold risk premium during recessions. An economic evaluation accounting for transaction costs shows that investors using machine learning methods to estimate expected returns on gold should anticipate limited portfolio gains.

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来源期刊
CiteScore
5.70
自引率
2.40%
发文量
53
期刊介绍: The purpose of the journal is also to stimulate international dialog among academics, industry participants, traders, investors, and policymakers with mutual interests in commodity markets. The mandate for the journal is to present ongoing work within commodity economics and finance. Topics can be related to financialization of commodity markets; pricing, hedging, and risk analysis of commodity derivatives; risk premia in commodity markets; real option analysis for commodity project investment and production; portfolio allocation including commodities; forecasting in commodity markets; corporate finance for commodity-exposed corporations; econometric/statistical analysis of commodity markets; organization of commodity markets; regulation of commodity markets; local and global commodity trading; and commodity supply chains. Commodity markets in this context are energy markets (including renewables), metal markets, mineral markets, agricultural markets, livestock and fish markets, markets for weather derivatives, emission markets, shipping markets, water, and related markets. This interdisciplinary and trans-disciplinary journal will cover all commodity markets and is thus relevant for a broad audience. Commodity markets are not only of academic interest but also highly relevant for many practitioners, including asset managers, industrial managers, investment bankers, risk managers, and also policymakers in governments, central banks, and supranational institutions.
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