Quarterly Forecasting Model for India's Economic Growth:

T. Iyer, Abhijit Sen Gupta
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引用次数: 1

Abstract

This study develops a framework to forecast India’s gross domestic product growth on a quarterly frequency from 2004 to 2018. The models, which are based on real and monetary sector descriptions of the Indian economy, are estimated using Bayesian vector autoregression (BVAR) techniques. The real sector groups of variables include domestic aggregate demand indicators and foreign variables, while the monetary sector groups specify the underlying inflationary process in terms of the consumer price index (CPI) versus the wholesale price index given India’s recent monetary policy regime switch to CPI inflation targeting. The predictive ability of over 3,000 BVAR models is assessed through a set of forecast evaluation statistics and compared with the forecasting accuracy of alternate econometric models including unrestricted and structural VARs. Key findings include that capital flows to India and CPI inflation have high informational content for India’s GDP growth. The results of this study provide suggestive evidence that quarterly BVAR models of Indian growth have high predictive ability.
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印度经济增长的季度预测模型
本研究开发了一个框架,以预测2004年至2018年印度的季度国内生产总值(gdp)增长。这些模型基于印度经济的真实和货币部门描述,使用贝叶斯向量自回归(BVAR)技术进行估计。实际部门变量组包括国内总需求指标和国外变量,而货币部门变量组根据消费者价格指数(CPI)与批发价格指数指定潜在的通胀过程,因为印度最近的货币政策制度转向了CPI通胀目标。通过一套预测评价统计,对3000多个BVAR模型的预测能力进行了评估,并与非限制性和结构性var等替代计量模型的预测精度进行了比较。主要发现包括资本流向印度和CPI通胀对印度GDP增长具有很高的信息含量。研究结果表明,季度BVAR模型对印度经济增长具有较高的预测能力。
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