测试非对称最佳对冲比率:比特币应用

Abdulnasser Hatemi-J
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引用次数: 0

摘要

降低金融风险对于投资者、金融机构和企业来说至关重要。自约翰逊(Johnson,1960 年)做出开创性贡献以来,基于期货的最优对冲比率一直被广泛使用。本文提出了一种明确而有效的方法,用于在多变量环境中检验对称最优对冲比率与非对称替代比率的零假设。如果拒绝了零假设,则可通过建议的模型估算与头寸相关的最优对冲比率。与标准方法相比,这种方法有望提高实施对冲策略的准确性,因为它考虑到了风险来源取决于投资者是风险资产的买方还是卖方这一事实。我们使用比特币的现货和期货价格进行了应用。结果有力地支持了这一观点,即加密货币的最佳对冲比率取决于头寸。与做空比特币的投资者相比,做多比特币的投资者的条件最优对冲比率要高得多。两个条件最优对冲比率之间的差异在统计上是显著的,这对实施风险管理策略具有重要影响。
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Testing for the Asymmetric Optimal Hedge Ratios: With an Application to Bitcoin
Reducing financial risk is of paramount importance to investors, financial institutions, and corporations. Since the pioneering contribution of Johnson (1960), the optimal hedge ratio based on futures is regularly utilized. The current paper suggests an explicit and efficient method for testing the null hypothesis of a symmetric optimal hedge ratio against an asymmetric alternative one within a multivariate setting. If the null is rejected, the position dependent optimal hedge ratios can be estimated via the suggested model. This approach is expected to enhance the accuracy of the implemented hedging strategies compared to the standard methods since it accounts for the fact that the source of risk depends on whether the investor is a buyer or a seller of the risky asset. An application is provided using spot and futures prices of Bitcoin. The results strongly support the view that the optimal hedge ratio for this cryptocurrency is position dependent. The investor that is long in Bitcoin has a much higher conditional optimal hedge ratio compared to the one that is short in the asset. The difference between the two conditional optimal hedge ratios is statistically significant, which has important repercussions for implementing risk management strategies.
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