技术变革对印度经济增长轨迹的影响:多变量- bvar分析

IF 3.2 3区 经济学 Q1 ECONOMICS
Debasis Rooj, Rituparna Kaushik
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引用次数: 0

摘要

摘要本文采用贝叶斯向量自回归(BVAR)方法研究了技术变革对印度经济增长的影响。我们使用了一个全面的年度时间序列数据集,涵盖1980年至2019年的实体经济活动、固定资本形成总额和就业。技术创新是通过印度居民申请专利的数量来衡量的。技术创新对经济增长和固定资本形成总量均有正向影响。我们的研究结果表明,专利数量的增加导致投资的增加,从而推动印度的经济增长。然而,我们的结果也指向技术创新对印度总就业情景可能产生的负面影响。我们的主要发现是稳健的替代识别策略和变量转换。非对称分析也证实了专利对推动印度投资和经济增长的积极影响。关键词:经济增长技术变革专利贝叶斯VARJEL分类:E44E31致谢感谢主编Cristiano Antonelli教授为我们改进稿件提供的宝贵建议。我们也感谢三位匿名审稿人对我们手稿的详细评论和建议。我们也感谢Reshmi Sengupta博士、Nilanjan Banik博士和Arnab Chakrabarti博士对本文某些部分的改进提出的建议和意见。披露声明作者未报告潜在的利益冲突。注1 Antonelli和Scellato对“创新”的概念进行了全面的讨论。“2虽然数据到2020年才可用,但我们将样本限制在2019年,并排除2020年,以避免因COVID-19大流行而可能出现的问题Normal-Wishart先验约束λ2到1的值。我们用不同的超参数设定值估计了基线模型。这一发现表明,由于超参数值的变化,irf在质量上并没有不同。然而,对于某些选择,置信区间变宽或变窄,这只是表明后验分布的形状,没有统计学意义。因此,我们可以得出结论,这些规范的发现对先验的不同超参数值的选择是稳健的我们考虑了略低的AR(1)参数值,如0.9和0.8,但它对结果的影响可以忽略不计我们的基线模型的DIC值为-969.84.6。BVAR估计是利用Dieppe等人(Citation2016)在MATLAB中开发的BEAR工具箱进行的。Sims和Zha (Citation1999)认为,传统的频率误差带可能会误导,因为它们将参数位置信息与模型拟合信息混合在一起。作者建议使用基于似然的频带,并认为68%的间隔频带可以更精确地估计真实覆盖概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of technological change on growth trajectory of India: a multivariate-BVAR analysis
ABSTRACTThis paper examines the impact of technological change on Indian economic growth using the Bayesian Vector Auto-Regressive (BVAR) methodology. We use a comprehensive annual time series dataset covering the period of 1980 to 2019 on real economic activity, gross fixed capital formation, and employment. Technological innovation is measured by the number of patents filed by resident Indians. Technological innovation positively impacts both economic growth and gross fixed capital formation. Our findings indicate that increasing the number of patents leads to higher investment, which drives India's economic growth. However, our results also point towards the possible negative influence of technological innovation on the aggregate employment scenario in India. Our main findings are robust to alternative identification strategies and variable transformation. The asymmetric analysis also corroborates the positive influence of patents on driving investment and economic growth in India.KEYWORDS: Economic growthtechnological changepatentsBayesian VARJEL CLASSIFICATION: E44E31 AcknowledgmentWe thank the Managing Editor, Prof. Cristiano Antonelli, for providing invaluable suggestions in helping us improve the manuscript. We also thank three anonymous reviewers of our manuscript for their detailed comments and suggestions. We also thank Dr. Reshmi Sengupta, Dr. Nilanjan Banik, and Dr. Arnab Chakrabarti for their suggestions and comments in improving certain sections of the paper.Disclosure statementNo potential conflict of interest was reported by the author(s).Notes1 Antonelli and Scellato provide comprehensive discussions on the idea of "Innovation."2 Although the data is available until 2020, we restrict our sample to 2019 and exclude 2020 to avoid the problem that can arise due to the COVID-19 pandemic.3 Normal-Wishart prior constraints λ2 to the value of 1. We have estimated the baseline model with different set values for the hyperparameters. The finding suggests that IRFs are not qualitatively different due to changes in the values of the hyperparameters. However, for some choices, the confidence intervals become wider or narrower, and these are only indicative of the shape of the posterior distribution and have no statistical significance. Therefore, we can conclude that the findings from these specifications are robust to choices of different hyperparameter values for the priors.4 We have considered slightly lower values of the AR(1) parameter, such as 0.9 and 0.8, but it has a negligible impact on the results.5 The DIC value for our baseline model is -969.84.6 BVAR estimation is conducted by employing the BEAR toolbox in MATLAB developed by Dieppe et al. (Citation2016)7 Sims and Zha (Citation1999) assert that the traditional frequentist error bands may be misleading as they mix parameter location information with model fit information. The authors propose using likelihood-based bands and argue that 68% interval bands provide a more precise estimate of the true coverage probability.
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来源期刊
CiteScore
7.20
自引率
3.00%
发文量
30
期刊介绍: Economics of Innovation and New Technology is devoted to the theoretical and empirical analysis of the determinants and effects of innovation, new technology and technological knowledge. The journal aims to provide a bridge between different strands of literature and different contributions of economic theory and empirical economics. This bridge is built in two ways. First, by encouraging empirical research (including case studies, econometric work and historical research), evaluating existing economic theory, and suggesting appropriate directions for future effort in theoretical work. Second, by exploring ways of applying and testing existing areas of theory to the economics of innovation and new technology, and ways of using theoretical insights to inform data collection and other empirical research. The journal welcomes contributions across a wide range of issues concerned with innovation, including: the generation of new technological knowledge, innovation in product markets, process innovation, patenting, adoption, diffusion, innovation and technology policy, international competitiveness, standardization and network externalities, innovation and growth, technology transfer, innovation and market structure, innovation and the environment, and across a broad range of economic activity not just in ‘high technology’ areas. The journal is open to a variety of methodological approaches ranging from case studies to econometric exercises with sound theoretical modelling, empirical evidence both longitudinal and cross-sectional about technologies, regions, firms, industries and countries.
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