Acknowledgement
The authors thank the National Information Technology Development Agency (NITDA) and Nile University of Nigeria (NUN) for supporting Y.A. Abass's studies in Nigeria. The authors thank the anonymous reviewers for their objective remarks and their suggestions on the paper.
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