Accurate forecasting of the U.K. gross value added (GVA) is fundamental for measuring the growth of the U.K. economy. A common nonstationarity in GVA data, such as the ABML series, is its increase in variance over time due to inflation. Transformed or inflation-adjusted series can still be challenging for classical stationarity-assuming forecasters. We adopt a different approach that works directly with the GVA series by advancing recent forecasting methods for locally stationary time series. Our approach results in more accurate and reliable forecasts, and continues to work well even when the ABML series becomes highly variable during the COVID pandemic.
翻译:准确预测英国总增值值(GVA)对于衡量英国经济增长至关重要,而GVA数据(如BRML系列)中常见的不固定数据(如GVA数据)是其因通货膨胀而随着时间推移而增加的差异。变换或通货膨胀调整的系列对于古典的定点假设预报人来说仍然具有挑战性。我们采取了一种与GVA系列直接合作的不同方法,方法是推进最近对当地固定时间序列的预测方法。我们的方法导致更准确和可靠的预测,即使在COVID大流行期间,反射L系列变化很大时,我们仍继续运作良好。</s>