An Assessment of The Effect of Mobile Money Services on The Profitability of The Banking Sector in Zambia
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Asian Institute of Research, Journal Publication, Journal Academics, Education Journal, Asian Institute
Asian Institute of Research, Journal Publication, Journal Academics, Education Journal, Asian Institute

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asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, managemet journal
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Published: 31 August 2022

An Assessment of The Effect of Mobile Money Services on The Profitability of The Banking Sector in Zambia

Austin Mwange, Pimpa Kasongola, Ayanda Meyiwa

ZCAS University, Indo-Zambia Bank, University of Kwa Zulu Natal

asian institute research, jeb, journal of economics and business, economics journal, accunting journal, business journal, management journal

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doi

10.31014/aior.1992.05.03.443

Pages: 139-152

Keywords: Mobile Money, Banking Sector, Profitability, Interest Income, Return on Equity

Abstract

The aim of the study was to investigate the effect of mobile money services on Zambia’s banking sector profitability. Profitability was proxied by Return on equity (ROE) and Gross interest income (GII). Using the Johansen Cointegration approach on quarterly data for the period 2012Q1 to 2021Q4, the results suggest a positive relationship between mobile money services and commercial banks’ profitability. Based on the results, the study recommends that there is need for commercial banks to continuously align their operational models with emergent innovative services in the sector while also appealing to regulators to collectively design regulatory frameworks that are responsive to developing sector trends.

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