利用GARCH模型评估期货合约的中央交易对手保证金覆盖率

Raymond Knott, Marco Polenghi
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引用次数: 7

摘要

本研究考虑了如何估计超过中央交易对手(CCP)初始保证金水平的概率,以便提供一个及时和信息丰富的风险覆盖措施。以往对CCP保证金的研究主要集中在收益的无条件分配上,在长期平均的基础上估计保证金覆盖率。本研究通过使用GARCH(1,1)模型估计条件边际覆盖率来扩展先前的工作,以便在更短的时间框架内跟踪覆盖率的变化。该模型被用于估计两种交易频繁的衍生品合约——布伦特(Brent)和富时100 (FTSE 100)期货——未覆盖的概率。为了解释有充分证据的期货收益分布的肥尾特征,估计了GARCH模型的几种变体。这些假设创新是按照正态分布、Student t分布、极值分布或历史分布分布的。回溯测试用于选择表现最佳的分布。在抽样期间,发现在一天的时间范围内,边际提供的覆盖率通常超过99%。然而,值得注意的是,在波动较大的市场条件下,模型所隐含的覆盖概率可能会下降;在这种情况下,中央交易对手将更频繁地重置初始保证金,并在日内要求保证金。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Central Counterparty Margin Coverage on Futures Contracts Using GARCH Models
This study considers how the probability of exceeding central counterparty (CCP) initial margin levels can be estimated, in order to provide a timely and informative measure of risk coverage. Previous studies of CCP margining have largely focused on the unconditional distribution of returns, estimating margin coverage on a long-term average basis. The present study extends previous work by estimating conditional margin coverage using a GARCH (1,1) model, so that variations in coverage can be tracked over a much shorter time frame. The model is applied to estimating non-coverage probabilities for two heavily traded derivatives contracts, the Brent and FTSE 100 futures. To account for the well-documented fat-tailed characteristics of distributions of futures returns, several variants of the GARCH model are estimated. These assume that innovations are distributed according to either normal, Student t, extreme value or historical distributions. Backtesting is used to select the best performing distribution. During the sample period, margins are found to provide a coverage level generally in excess of 99%, over a one-day time horizon. It is noted, however, that the coverage probability implied by the model is likely to fall under more volatile market conditions; under these circumstances central counterparties will reset initial margin more frequently and call for margin intraday.
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