Impact of price realization on India’s tea export: Evidence from Quantile Autoregressive Distributed Lag Model
D. Pal, S.K. Mitrahttps://doi.org/10.17221/209/2014-AGRICECONCitation:Pal D., Mitra S.K. (2015): Impact of price realization on India’s tea export: Evidence from Quantile Autoregressive Distributed Lag Model. Agric. Econ. – Czech, 61: 422-428.
The quantile autoregressive distributed lag model of Galvao et al. (2013) was employed to assess the impact of price realization on India’s tea export. The results of the QADL varied significantly from the conditional mean estimates. It was found that the tea export from India had autoregressive impact, and that production and export price realization had asymmetric relationship with India’s tea export that varied over quantiles.Keywords:export price realization, Quantile Autoregressive Distributed Lag model, IndiaReferences:
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