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Structural Breaks, Biased Estimations, and Forecast Errors in a GDP Series of Canada versus the United States

机译:在加拿大GDP系列的结构中断,偏见估计和预测错误与美国

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A structural break was suspected for the Canadian gross domestic product (GDP) time series when the reporting system switched from the Standard Industrial Classification system to the North American Industry Classification System system in 1997, as was previously detected for the United States. Any failure to identify in-sample breaks not only will produce biased parameter estimates but may adversely affect the model's out-of-sample forecasting performance. This study investigated the possibility of poor forecast performance and biased estimation in the presence of the 1997 structural break in Canadian GDP. We confirmed the detected break in Canadian GDP data (1973-2014). All statistics indicated that the coefficients were not stable over time. Three models were employed to provide more accurate forecasts of GDP. The results demonstrate gains in forecasting precision when out-of-sample models accounted for structural breaks. Decision and policy makers might benefit from more precise GDP anticipation if the models were corrected for the 1997 break.
机译:当报告系统于1997年从标准工业分类系统转换为北美工业分类系统系统的报告系统以前检测到美国,涉及加拿大国内生产国内产品(GDP)时间序列的结构休息。任何未识别样本中断的故障不仅会产生偏置参数估计,但可能会对模型的预测性能产生不利影响。本研究调查了1997年在加拿大GDP的1997年结构突破存在下差价差的绩效和偏见估计的可能性。我们确认了在加拿大GDP数据(1973-2014)中检测到的休息。所有统计数据表明系数随着时间的推移不稳定。采用三种模型提供更准确的GDP预测。结果在预测精度时展示了预测精度时的增益,当样本模型占结构突破时。如果模型在1997年休息中纠正,则决定和决策者可能会受益于更精确的GDP预期。

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