The PAR Framework Proof of Concept: Initial Findings from a Multi-Institutional Analysis of Federated Postsecondary Data

P. Ice, S. Diaz, Karen Swan, Melissa Burgess, Mike Sharkey, Jonathan Sherrill, Daniel Huston, H. Okimoto
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引用次数: 28

Abstract

Despite high enrollment numbers, postsecondary completion rates have generally remained unchanged for the past 30 years and half of these students do not attain a degree within six years of initial enrollment. Although online learning has provided students with a convenient alternative to face-to-face instruction, there remain significant questions regarding online learning program quality, particularly when considering patterns of student retention and progression. By aggregating student and course data into one dataset, six postsecondary institutions worked together toward determining factors that contribute to retention, progression, and completion of online learners with specific purposes: (1) to reach consensus on a common set of variables among the six institutions that inform student retention, progression and completion; (2) to explore advantages and/or disadvantages of particular statistical and methodological approaches to assessing factors related to retention, progression and completion. In the relatively short timeframe of the study, 33 convenience variables informing retention, progression, and completion were identified and defined by the six participating institutions. This initiative, named the Predictive Analytics Reporting Framework (PAR) and the initial statistical analyses utilized are described in this paper.
PAR框架的概念证明:来自联邦高等教育数据的多机构分析的初步发现
尽管入学率很高,但在过去的30年里,高等教育完成率总体上保持不变,其中一半的学生在最初入学的六年内没有获得学位。尽管在线学习为学生提供了面对面教学的方便选择,但在线学习项目的质量仍然存在重大问题,特别是考虑到学生的保留和进步模式。通过将学生和课程数据汇总到一个数据集中,六所高等教育机构共同努力,确定有助于在线学习者保留、进步和完成的因素,并具有特定目的:(1)在六所机构之间就一组共同的变量达成共识,这些变量可告知学生保留、进步和完成;(2)探讨特定统计和方法方法的优点和/或缺点,以评估与保留,进展和完成相关的因素。在相对较短的研究时间框架内,六个参与机构确定并定义了33个方便变量,这些变量通知保留、进展和完成。该计划被命名为预测分析报告框架(PAR),并在本文中描述了所使用的初始统计分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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