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Utilizing Traditional Cognitive Measures of Academic Preparation to Predict First-Year Science, Technology, Engineering, and Mathematics (STEM) Majorsu27 Success in Math and Science Courses

机译:利用传统的学术准备认知措施预测第一年的科学,技术,工程和数学(sTEm)专业 u27数学和科学课程的成功

摘要

For the past several years, U.S. colleges and universities have faced increased pressure to improve retention and graduation rates. At the same time, educational institutions have placed a greater emphasis on the importance of enrolling more students in STEM (science, technology, engineering and mathematics) programs and producing more STEM graduates. The resulting problem faced by educators involves finding new ways to support the success of STEM majors, regardless of their pre-college academic preparation. The purpose of my research study involved utilizing first-year STEM majors’ math SAT scores, unweighted high school GPA, math placement test scores, and the highest level of math taken in high school to develop models for predicting those who were likely to pass their first math and science courses. In doing so, the study aimed to provide a strategy to address the challenge of improving the passing rates of those first-year students attempting STEM-related courses. The study sample included 1018 first-year STEM majors who had entered the same large, public, urban, Hispanic-serving, research university in the Southeastern U.S. between 2010 and 2012. The research design involved the use of hierarchical logistic regression to determine the significance of utilizing the four independent variables to develop models for predicting success in math and science. The resulting data indicated that the overall model of predictors (which included all four predictor variables) was statistically significant for predicting those students who passed their first math course and for predicting those students who passed their first science course. Individually, all four predictor variables were found to be statistically significant for predicting those who had passed math, with the unweighted high school GPA and the highest math taken in high school accounting for the largest amount of unique variance. Those two variables also improved the regression model’s percentage of correctly predicting that dependent variable. The only variable that was found to be statistically significant for predicting those who had passed science was the students’ unweighted high school GPA. Overall, the results of my study have been offered as my contribution to the literature on predicting first-year student success, especially within the STEM disciplines.
机译:在过去的几年中,美国的大学和学院面临着提高保留率和毕业率的更大压力。同时,教育机构更加重视招募更多学生参加STEM(科学,技术,工程和数学)课程并培养更多STEM毕业生的重要性。教育工作者面临的最终问题是寻找新的方法来支持STEM专业学生的成功,而不论他们的大学预备学术准备如何。我的研究目的是利用一年级STEM专业学生的数学SAT分数,未加权的高中GPA,数学入学考试分数和高中数学的最高水平来开发模型,以预测可能通过其考试的人第一门数学和科学课程。通过这样做,该研究旨在提供一种策略来应对提高那些尝试与STEM相关的课程的一年级学生通过率的挑战。该研究样本包括2010年至2012年间进入美国东南部同一所大型,公立,城市,西班牙裔服务的研究型大学的1018名第一年STEM专业学生。研究设计涉及使用分层逻辑回归确定其重要性。利用四个独立变量来开发预测数学和科学成功的模型。所得数据表明,预测变量的整体模型(包括所有四个预测变量)在统计学上对预测通过第一门数学课程的学生和预测对通过第一门科学课程的学生具有统计学意义。单独地,发现所有四个预测变量对通过数学的人具有统计学意义,其中未加权的高中GPA和在中学中采用的最高数学占最大的唯一方差。这两个变量还提高了回归模型正确预测该因变量的百分比。发现对预测那些通过科学的人具有统计学意义的唯一变量是学生的未加权高中GPA。总的来说,我的研究结果作为我对预测大一学生成功的文献的贡献,特别是在STEM学科中。

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    Andrews Charles K;

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