What drives risk in China’s soybean futures market? Evidence from a flexible GARCH-MIDAS model

IF 1.4 4区 经济学 Q3 ECONOMICS
Xinyu Wang, Lele Zhang, Qiuying Cheng, Song Shi, Huawei Niu
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引用次数: 2

Abstract

ABSTRACT Modeling futures market risk simultaneously influenced by macro low-frequency information and daily risk factors is a valuable challenge. We propose a new general framework for it based on the flexible GARCH-MIDAS model. It uses a skewed t distribution to describe the asymmetry of long and short trading positions, allows for a different number of trading days per month, and can identify the optimal combination of risky factors. We also derive its impact response function on how low-frequency factors directly influence the high-frequency futures market risk. Through an exhaustive empirical analysis of the Chinese soybean futures market, we not only find its excellent out-of-sample market risk forecasting performance but also offer systematic recommendations for improving risk management.
是什么驱动了中国大豆期货市场的风险?来自灵活的GARCH-MIDAS模型的证据
摘要对同时受宏观低频信息和日常风险因素影响的期货市场风险进行建模是一项有价值的挑战。我们在灵活的GARCH-MIDAS模型的基础上提出了一个新的通用框架。它使用偏斜的t分布来描述多头和空头交易头寸的不对称性,允许每月有不同的交易天数,并可以确定风险因素的最佳组合。我们还推导了低频因素如何直接影响高频期货市场风险的影响响应函数。通过对中国大豆期货市场的详尽实证分析,我们不仅发现了其优秀的样本外市场风险预测性能,而且为改进风险管理提供了系统的建议。
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来源期刊
CiteScore
3.00
自引率
0.00%
发文量
57
审稿时长
40 weeks
期刊介绍: The Journal of Applied Economics publishes papers which make a significant and original contribution to applied issues in micro and macroeconomics. The primary criteria for selecting papers are quality and importance for the field. Papers based on a meaningful and well-motivated research problem that make a concrete contribution to empirical economics or applied theory, in any of its fields, are especially encouraged. The wide variety of topics that are covered in the Journal of Applied Economics include: -Industrial Organization -International Economics -Labour Economics -Finance -Money and Banking -Growth -Public Finance -Political Economy -Law and Economics -Environmental Economics
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