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Evaluating impacts of ICT development on wages of workers

    Zheng Shi Affiliation

Abstract

At the provincial level, there is a research gap in discussing the causality and internal mechanism between ICT development and wages of workers. The study utilizes the province-level balanced panel data over the period 2006–2021 in China, clarifies the impact and internal mechanism of ICT development on wages of workers, and uses the DID method to identify the causality between the two. This study found that there is a positive correlation between ICT development and workers’ wages, and skill level is a mediate transmission channel. Moreover, ICT development has a positive impact on workers’ wages in the central and western regions. Besides, compared to low-wage workers, high-wage workers gain more information dividends. The findings of this study have reference significance for policymakers. First, for the central and western provinces in China, it is necessary to actively develop the ICT industry, cultivate high-tech enterprises, and improve local ICT development levels. Second, we should improve the skill level of workers and enhance their competitive advantage in employment. Third, each province should continue to expand the enrollment scale of higher education institutions, and improve the quality of labor force.


First published online 09 September 2024

Keyword : ICT development, wages, skill level, high-quality employment, China

How to Cite
Shi, Z. (2024). Evaluating impacts of ICT development on wages of workers. Technological and Economic Development of Economy, 1-18. https://doi.org/10.3846/tede.2024.22064
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Sep 9, 2024
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