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Examining the Determinants of Import Demand in Tanzania: An ARDL Approach

Author

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  • N.P. Vacu

    (University of South Africa)

  • N.M. Odhiambo

    (University of South Africa)

Abstract

This study estimates the determinants of import demand in Tanzania using time-series data for the period from 1985 to 2015. The study applied the ARDL approach on Tanzania’s time-series data to examine the key drivers of import demand. The study used both aggregate import demand model (i.e., Model 1) and disaggregated import demand models, i.e., Model 2 (for consumer goods), Model 3 (for intermediate goods) and Model 4 (for capital goods) to examine this linkage. The study found that in Model 1, aggregate imports in Tanzania are positively influenced by investment and exports, and negatively determined by trade policy. In Model 2, it was found that imports for consumer goods to are positively influenced by consumer spending and foreign reserves, but negatively influenced by trade policy. In Model 3, imports for intermediate goods were found to be positively influenced by exports in the long run. Finally, in Model 4, the study found imports for capital goods to be positively influenced by exports (in the short- and long-run), but negatively influenced by investment (in short run). The study recommends that policymakers in Tanzania should strengthen their macroeconomic policies to ensure that their imports are not consumption based and have an enhancing effect on the country’s economic activities.

Suggested Citation

  • N.P. Vacu & N.M. Odhiambo, "undated". "Examining the Determinants of Import Demand in Tanzania: An ARDL Approach," Working Papers 2124, African Economic and Social Research Institute (AESRI).
  • Handle: RePEc:afa:wpaper:2124
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