Effect of I-tax Implementation on Revenue Collection in Kenya
Abstract
In an era characterized by rapid technological advancements and digital
transformations, tax collection systems worldwide have undergone significant
evolutions. Kenya's introduction of the I-tax system serves as a prime example, aiming
to modernize and optimize revenue collection. Given the pivotal role of taxation in a
nation's economic health, understanding the implications of such systemic changes is
crucial. This study sought to ascertain the impact of the I-tax implementation on
revenue collection in Kenya. Anchored within the frameworks of the theory of optimal
taxation, tax incidence theory, and economic deterrence theory, the research aimed to
decipher the relationship between digital tax initiatives and economic indicators. A
descriptive research design was employed, harnessing secondary data from the Kenya
Revenue Authority (KRA), Kenyan Central Bank, and the Kenya National Bureau of
Statistics (KNBS). The study's temporal scope spanned 14 years, divided into two
distinct phases: seven years before the I-tax implementation (2009-2015) and seven
years’ post-implementation (2016-2022). Data on quarterly tax revenue, interest rates,
inflation rates, and unemployment rates were meticulously gathered and analyzed. The
research employed descriptive statistics, correlation analysis, and regression analysis to
derive meaningful insights. The analysis yielded notable outcomes. Correlation results
revealed a significant positive relationship between I-tax implementation and revenue
collection. Meanwhile, economic indicators like unemployment rates were found to
have a negative correlation with revenue. The regression model demonstrated that
approximately 47.7% of the variation in revenue collection was attributable to the
predictors. Specifically, the I-tax system had a positive effect, and a higher
unemployment rate was inversely related to revenue collection. However, interest and
inflation rates did not manifest statistically significant impacts within the regression
framework. The study concludes that the I-tax system has made a positive stride in
enhancing revenue collection in Kenya. Yet, it doesn't operate in a vacuum. Broader
economic conditions, particularly unemployment rates, have considerable bearings on
revenue collection dynamics. Policymakers should prioritize the integration of
technology in tax systems, buttressed by robust taxpayer education campaigns.
Continuous refinement and iterative improvements of digital platforms, paired with
feedback mechanisms, can ensure the long-term success of such initiatives. Future
research endeavors should consider extending the timeline to capture the prolonged
implications of the I-tax system. Adopting a broader set of economic indicators can also
offer a more holistic view of the revenue collection landscape.
Publisher
University of Nairobi
Rights
Attribution-NonCommercial-NoDerivs 3.0 United StatesUsage Rights
http://creativecommons.org/licenses/by-nc-nd/3.0/us/Collections
- School of Business [1576]
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