新兴市场信贷周期当前阶段的确定

Elena Deryugina, A. Ponomarenko
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引用次数: 5

摘要

我们测试了文献中出现的早期预警指标在新兴市场横截面上预测信贷周期峰值的能力,并通过横截面验证验证了我们的发现。我们的结果证实,标准信贷缺口指标表现令人满意。事实上,我们发现,在新兴市场经济体中,通过增强多元模型来超越这一指标似乎相当困难。然而,我们发现,通过同时监测GDP增长、银行的非核心负债、金融部门的增加值和(在较小程度上)偿债比率的变化,实时信贷周期确定的稳健性可能会得到改善(尽管存在数据过度拟合的风险)。
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Determination of the Current Phase of the Credit Cycle in Emerging Markets
We test the ability of early warning indicators that appear in the literature to predict credit cycle peaks in a cross-section of emerging markets, verifying our findings by cross-sectional validation. Our results confirm that the standard credit gap indicator performs satisfactorily. In fact, we find that, in emerging market economies, it seems rather difficult to outperform this indicator by means of augmented multivariate models. Nevertheless, we have found that the robustness of real-time credit cycle determination may potentially be improved (although with a risk of overfitting the data) by simultaneously monitoring GDP growth, banks’ non-core liabilities, the financial sector’s value added and (to a lesser extent) the change in the debt service ratio.
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