Garch(1,1) 模型的尾部风险单调性

PAUL GLASSERMAN, DAN PIRJOL, QI WU
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引用次数: 0

摘要

在广泛适用的条件下,GARCH(1,1) 过程的静态分布具有幂律衰减。在创新分布保持不变的情况下,我们研究了在参数的时间聚合下尾部衰减指数的变化。之所以要进行这种比较,是因为 GARCH 模型经常适用于不同频率的同一时间序列。由此产生的模型并不严格兼容,因此我们寻求更有限的特性,我们称之为预测一致性和尾部一致性。预测一致性是通过参数变换来实现的。尾部一致性使我们得出了在时间聚合下尾部指数增加的条件,这些条件涵盖了大多数相关的参数和创新分布组合。但我们也证明了在单调性失效的可容许参数区域边界附近存在反例。这些反例包括正态分布的创新。
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TAIL RISK MONOTONICITY IN GARCH(1,1) MODELS

The stationary distribution of a GARCH(1,1) process has a power law decay, under broadly applicable conditions. We study the change in the exponent of the tail decay under temporal aggregation of parameters, with the distribution of innovations held fixed. This comparison is motivated by the fact that GARCH models are often fit to the same time series at different frequencies. The resulting models are not strictly compatible so we seek more limited properties we call forecast consistency and tail consistency. Forecast consistency is satisfied through a parameter transformation. Tail consistency leads us to derive conditions under which the tail exponent increases under temporal aggregation, and these conditions cover most relevant combinations of parameters and innovation distributions. But we also prove the existence of counterexamples near the boundary of the admissible parameter region where monotonicity fails. These counterexamples include normally distributed innovations.

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来源期刊
CiteScore
1.10
自引率
20.00%
发文量
28
期刊介绍: The shift of the financial market towards the general use of advanced mathematical methods has led to the introduction of state-of-the-art quantitative tools into the world of finance. The International Journal of Theoretical and Applied Finance (IJTAF) brings together international experts involved in the mathematical modelling of financial instruments as well as the application of these models to global financial markets. The development of complex financial products has led to new challenges to the regulatory bodies. Financial instruments that have been designed to serve the needs of the mature capitals market need to be adapted for application in the emerging markets.
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