阿尔及利亚外汇市场效率市场假说检验中的长记忆模型

Yassine Benzai, Hadjar Soumia Aouad, Nassima Djellouli
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引用次数: 0

摘要

摘要本研究的目的是从阿尔及利亚汇率市场的角度来检验效率市场假说。我们对阿尔及利亚三个主要汇率回报序列对美元、欧元和英镑进行了依赖性、长记忆、波动性聚类和单位根检验。实证结果表明,自回归移动平均(ARMA)-分数积分广义自回归条件异方差(FIGARCH)组合模型最适合代表汇率收益行为。我们还比较了估计模型和随机漫步(RW)在样本外预测方面的预测质量。这些结果被认为意味着EMH在阿尔及利亚汇率市场上被拒绝。因此,可以预测汇率波动,这可能有助于公共当局干预外汇市场,并评估不同经济政策的后果。
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Long-Memory Models in Testing the Efficiency Market Hypothesis of the Algerian Exchange Market
Abstract The purpose of this study is to examine the Efficiency Market Hypothesis (EMH) from the perspective of the Algerian exchange rate market. We apply different tests of dependence, long memory, volatility clustering and unit root tests over the three main Algerian exchange rate returns series vis–à-vis the US Dollar, the Euro, and the British Pound. Empirical findings suggest that combined Autoregressive Moving Average (ARMA)-Fractionally Integrated Generalized Autoregressive Conditional Heteroskedastic (FIGARCH) models were the most appropriate to represent the behavior of exchange rate returns. We also compare the predictive qualities of the estimated models and the Random Walk (RW) in terms of out-of-sample forecasting. The results are held to imply the rejection of the EMH in the Algerian exchange rate market. Therefore, the exchange rates fluctuations can be predicted, which may help public authorities intervene in the exchange market and assess the consequences of different economic policies.
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