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引用次数: 23
摘要
用对不确定程度和风险的主要方向的评估来补充点宏观经济预测,已日益成为标准做法。文献中提出了几种替代方法来计算宏观经济预测的概率分布;所有这些都依赖于将基于模型的预测密度与对当前风险的方向和强度的主观判断相结合。我们提出了一种非参数的、基于模型的模拟方法,它不需要对风险源的概率分布做出特定的假设。宏观经济预测的概率分布是基于模型的随机模拟的结果,它依赖于从风险因素的历史分布中重新抽样,并旨在提供所需的偏度。相比之下,其他方法通常对风险因素的分布做出具体的参数假设。意大利央行(Bank of italy ?3.5季度宏观计量经济模型。结果表明,即使假设所有风险因素都是非对称分布,宏观经济预测的分布也会迅速趋于对称。
A Non-Parametric Model-Based Approach to Uncertainty and Risk Analysis of Macroeconomic Forecast
It has increasingly become standard practice to supplement point macroeconomic forecasts with an appraisal of the degree of uncertainty and the prevailing direction of risks. Several alternative approaches have been proposed in the literature to compute the probability distribution of macroeconomic forecasts; all of them rely on combining the predictive density of model-based forecasts with subjective judgment about the direction and intensity of prevailing risks. We propose a non-parametric, model-based simulation approach, which does not require specific assumptions to be made regarding the probability distribution of the sources of risk. The probability distribution of macroeconomic forecasts is computed as the result of model-based stochastic simulations which rely on re-sampling from the historical distribution of risk factors and are designed to deliver the desired degree of skewness. By contrast, other approaches typically make a specific, parametric assumption about the distribution of risk factors. The approach is illustrated using the Bank of Italyi?½s Quarterly Macroeconometric Model. The results suggest that the distribution of macroeconomic forecasts quickly tends to become symmetric, even if all risk factors are assumed to be asymmetrically distributed.