空间效应在预测中国各省增长中的作用如何?

E. Girardin, K. Kholodilin
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引用次数: 0

摘要

本文同时对中国31个省份的实际地区生产总值(GRP)的年增长率进行了多步预测。除了通常的面板数据模型外,我们还使用了明确说明GRP增长率之间空间依赖性的面板模型。此外,还考虑了不同省份群体(内陆和沿海)空间效应不同的可能性。我们发现,与各省单独估计的基准模型相比,池化和考虑空间效应都有助于显著提高预测效果。研究还表明,考虑空间依赖性的影响在较长的预测范围内更为明显(以预测误差的均方根测量的预测精度增益在1年范围内约为8%,在13年和14年范围内超过25%)。
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How Helpful are Spatial Effects in Forecasting the Growth of Chinese Provinces?
In this paper, we make multi-step forecasts of the annual growth rates of the real Gross Regional Product (GRP) for each of the 31 Chinese provinces simultaneously. Beside the usual panel data models, we use panel models that explicitly account for spatial dependence between the GRP growth rates. In addition, the possibility of spatial effects being different for different groups of provinces (Interior and Coast) is allowed for. We find that both pooling and accounting for spatial effects helps substantially improve the forecast performance compared to the benchmark models estimated for each of the provinces separately. It is also shown that the effect of accounting for spatial dependence is even more pronounced at longer forecasting horizons (the forecast accuracy gain as measured by the root mean squared forecast error is about 8% at the 1-year horizon and exceeds 25% at the 13- and 14-year horizon).
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