Measuring the Credibility of Student Attendance Data in Higher Education for Data Mining
Mohammed Alsuwaiket, Christian Dawson, Firat Batmaz

TL;DR
This paper introduces a new method to measure the credibility of student attendance data in higher education, aiming to improve accuracy over traditional counting methods and enhance data-driven insights.
Contribution
It formulates a Student Attendance Credibility (SAC) measure based on selected attributes and validates its reliability for better attendance assessment.
Findings
The SAC measure provides more accurate attendance indicators.
The method improves classification of modules based on attendance credibility.
Results show enhanced reliability and validity of attendance data analysis.
Abstract
Educational Data Mining (EDM) is a developing discipline, concerned with expanding the classical Data Mining (DM) methods and developing new methods for discovering the data that originate from educational systems. Student attendance in higher education has always been dealt with in a classical way, educators rely on counting the occurrence of attendance or absence building their knowledge about students as well as modules based on this count. This method is neither credible nor does it necessarily provide a real indication of a student performance. This study tries to formulate the extracted knowledge in a way that guarantees achieving accurate and credible results. Student attendance data, gathered from the educational system, were first cleaned in order to remove any randomness and noise, then various attributes were studied so as to highlight the most significant ones that affect…
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Taxonomy
MethodsDilated Convolution · Global Average Pooling · Average Pooling · Convolution · 1x1 Convolution · Switchable Atrous Convolution
