GPT 参加 SAT 考试:追踪学生考试难度和数学成绩的变化

Vikram Krishnaveti, Saannidhya Rawat
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摘要

学术能力测验(SAT)对大学录取至关重要,但其有效性和相关性却日益受到质疑。本文通过引入 "转换控制"(Transformed Control)来增强合成控制方法,这是一种采用人工智能驱动的大型语言模型(LLM)来生成控制组的新方法。我们利用 OpenAI 的 API 生成一个控制组,其中的 GPT-4 或 ChatGPT 从 2008 年到 2023 年每年参加多次 SAT 考试。这个对照组有助于分析从 2008 年基线年开始的 SAT 数学难度随时间的变化。利用平行趋势,我们计算了平均分数差异(ADS),以评估高中生数学成绩的变化。我们的结果表明,随着时间的推移,SAT 数学部分的难度明显降低,学生的数学成绩也随之下降。分析表明,从 2008 年到 2023 年,SAT 数学的难度下降了 71 分,学生成绩下降了 36 分,导致学生数学平均成绩的总分差达到 107 分。我们研究了数学能力下降的可能机制,如大学选拔标准的变化、屏幕时间的增加、成绩膨胀以及青少年心理健康状况的恶化。不同人口群体之间的差异显示,白人学生的数学成绩下降了 104 分,黑人学生下降了 84 分,亚裔学生下降了 53 分。男生下降了 117 分,女生下降了 100 分。
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GPT takes the SAT: Tracing changes in Test Difficulty and Math Performance of Students
Scholastic Aptitude Test (SAT) is crucial for college admissions but its effectiveness and relevance are increasingly questioned. This paper enhances Synthetic Control methods by introducing "Transformed Control", a novel method that employs Large Language Models (LLMs) powered by Artificial Intelligence to generate control groups. We utilize OpenAI's API to generate a control group where GPT-4, or ChatGPT, takes multiple SATs annually from 2008 to 2023. This control group helps analyze shifts in SAT math difficulty over time, starting from the baseline year of 2008. Using parallel trends, we calculate the Average Difference in Scores (ADS) to assess changes in high school students' math performance. Our results indicate a significant decrease in the difficulty of the SAT math section over time, alongside a decline in students' math performance. The analysis shows a 71-point drop in the rigor of SAT math from 2008 to 2023, with student performance decreasing by 36 points, resulting in a 107-point total divergence in average student math performance. We investigate possible mechanisms for this decline in math proficiency, such as changing university selection criteria, increased screen time, grade inflation, and worsening adolescent mental health. Disparities among demographic groups show a 104-point drop for White students, 84 points for Black students, and 53 points for Asian students. Male students saw a 117-point reduction, while female students had a 100-point decrease.
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