예측조합 �? 밀�?�함수�? �?�한 소비�?물가 �?승률 전�? (Forecasting CPI Inflation Using Combination of Point Forecast and Density Forecast)

Hyun Hak Kim
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引用次数: 1

Abstract

Forecast combinations and density forecast have frequently been found in empirical research to produce better prediction performance on average than methods based on the best single model. Density forecastan estimate of the probability distribution of the possible future values of that variablehas received attention in the forecast literature. This paper combines point forecast and density forecast to predict Korean CPI inflation and compares the performance of each forecast with various models including factor models, shrinkage models, and bayesian model averaging. We find that the more models included in point forecast combinations leads to the better performance of the combinations than the benchmark autoregressive model, regardless of the independent performance of a single model. We also find that combinations of more models provide a result robust to sample periods. Density forecasts and their combinations present the direction of future inflation and predictive densities. We expect that forecast combination and density forecast can provide better performance with more disciplines, for example, combining more various models and mixing different frequency data models.
是预测组合吗?是吗?是函数吗?�?这是什么消费?物价�?胜率前�?CPI Inflation Using Combination of Point Forecast and Density Forecast
在实证研究中经常发现,预测组合和密度预测的平均预测效果优于基于最佳单一模型的方法。密度预测——对该变量未来可能值的概率分布的估计——在预测文献中受到了关注。本文将点预测和密度预测相结合,对韩国的CPI上涨率进行预测,并与因子模型、收缩模型、贝叶斯平均模型等多种模型进行比较。我们发现,无论单个模型的独立性能如何,点预测组合中包含的模型越多,组合的性能优于基准自回归模型。我们还发现更多模型的组合提供了对样本周期的鲁棒性结果。密度预测和它们的组合显示了未来膨胀和预测密度的方向。我们期望预测组合和密度预测能够在更多的学科中提供更好的性能,例如组合更多的模型,混合不同频率的数据模型。
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