An Adaptive Approach to Forecasting Three Key Macroeconomic Variables for Transitional China

Linlin Niu, Xiu Xu, Ying Chen
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引用次数: 7

Abstract

We propose the use of a local autoregressive (LAR) model for adaptive estimation and forecasting of three of China’s key macroeconomic variables: GDP growth, inflation and the 7-day interbank lending rate. The approach takes into account possible structural changes in the data-generating process to select a local homogeneous interval for model estimation, and is particularly well-suited to a transition economy experiencing ongoing shifts in policy and structural adjustment. Our results indicate that the proposed method outperforms alternative models and forecast methods, especially for forecast horizons of 3 to 12 months. Our 1-quarter ahead adaptive forecasts even match the performance of the well-known CMRC Langrun survey forecast. The selected homogeneous intervals indicate gradual changes in growth of industrial production driven by constant evolution of the real economy in China, as well as abrupt changes in interestrate and inflation dynamics that capture monetary policy shifts.
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转型中国三个关键宏观经济变量的自适应预测方法
我们建议使用局部自回归(LAR)模型对中国的三个关键宏观经济变量:GDP增长、通货膨胀和7天银行间拆借利率进行自适应估计和预测。该方法考虑到数据产生过程中可能出现的结构变化,以便为模型估计选择一个局部均匀区间,特别适合正在经历政策转变和结构调整的转型经济。结果表明,该方法优于其他模型和预测方法,特别是在3 ~ 12个月的预测范围内。我们的1季度自适应预测甚至与著名的CMRC朗润调查预测相匹配。所选的同质区间表明,在中国实体经济不断演变的推动下,工业生产的增长出现了逐渐变化,利率和通胀动态也出现了突然变化,反映了货币政策的转变。
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