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  • The progressive advancement of technology and the rise of fissured workplaces have led to significant shifts in global employment structures, particularly towards the gig economy. In Canada, however, gig economy workers remain largely excluded from opportunities for unionisation. Historically, unions have demonstrated substantial organisational power, serving as critical institutions for improving workplace conditions through collective bargaining. This study, therefore, aims to examine the impact of unionisation, immigration, human capital, inflation and information and communication technology on wage determination in Canada, situating the analysis within the broader context of a rapidly evolving employment landscape.,Using Canadian time series data from 1980 to 2022, the research uses the dynamic autoregressive distributed lag approach to identify both cointegrating relationships and counterfactual effects among the variables. Additionally, the counterfactual analysis examines the effects of ±1% and ±5% shocks on the dependent variables. The robustness of these findings is confirmed through the kernel-based regularised least squares machine learning approach.,The findings reveal that unionisation, inflation, immigration and information and communication technology development significantly influence wages at a 1% level, while human capital at a 5% level in the long term. The robustness of these findings is further confirmed by the kernel regularised least squares machine learning algorithm.,Based on the findings, the study recommends that policymakers should implement targeted strategies to enhance union representation among gig economy workers and strengthen collective bargaining mechanisms. Additionally, addressing broader factors influencing wage dynamics, such as human capital development, immigration policies, information and communication technology advancements and inflation-indexed wage adjustments, can foster equitable and sustainable wage growth across diverse sectors.,Exploring the dynamic and cointegrating relationships between unions’ organising power and wage levels within the purview of inflation, immigration, human capital and information and communication technology development is unprecedented. Additionally, applying the kernel regularised least squares machine learning algorithm to check robustness is completely new in a study within the realm of employment relationships.

Last update from database: 4/24/25, 4:10 AM (UTC)

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