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Analysis of an informed peer review matching algorithm and its impact on student work on model-eliciting activities.

机译:分析知情的同行评议匹配算法及其对学生在模型引发活动中的工作的影响。

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摘要

Model-Eliciting Activities (MEAs) are realistic, open-ended, client-driven engineering problems designed to foster students' mathematical modeling abilities. Since 2005, the MEAs used in Purdue University's first-year engineering core course have included a double-blind peer review wherein individuals in the course (peers) are randomly assigned a student team's response to an MEA to review.;In 2007, a calibration exercise where by students evaluated a prototypical piece of student work and compared their review to that of an expert was added to the MEA implementation sequence in an attempt to increase the quality of feedback individuals were provided during the peer review. At that time the reviewer-reviewee assignment process remained random. The calibration exercise's value was limited only to the self-reflective knowledge a student gained from comparing their responses on the MEA Rubric to those of the expert.;This research investigated the impact of informed peer review matching algorithms on the quality of team's final MEA responses. The algorithms use data from the calibration exercise and Teaching Assistant marks on the team's first draft response as measurements of the reviewers accuracy and reviewees degree of assistance needed in order to make more informed matches. Three informed assignment methods were developed and one was thoroughly investigated to determine its impact. The violation of multiple critical assumptions surrounding the assignment method resulted in no apparent differences between the selected informed assignment method and the blind random assignment method. The failure of those assumptions indicates that the existing training methods and/or the rubric are inadequate for producing sufficiently valid TA and student marks on MEAs. Details of how the assumptions were violated and what must be done to resolve them to better investigate the research question are discussed.
机译:选拔模型活动(MEA)是现实的,开放性的,客户驱动的工程问题,旨在培养学生的数学建模能力。自2005年以来,普渡大学第一年工程核心课程中使用的MEA包括双盲同行评审,其中课程中的个人(同行)被随机分配一个学生团队对MEA的响应进行评审; 2007年,进行了校准练习中,学生评估了学生的原型作品,并将他们的评论与专家的评论进行了比较,并添加到MEA的实施顺序中,以提高同行评审过程中提供的个人反馈的质量。那时,审阅者-受审者的分配过程仍然是随机的。校准练习的价值仅限于学生通过将他们对MEA专栏的回答与专家进行比较而获得的自反知识;该研究调查了知情的同行评议匹配算法对团队最终MEA回答质量的影响。该算法使用来自校准练习的数据和团队第一稿回应上的助教标记作为对审阅者准确性和受审者协助程度的度量,以便做出更明智的匹配。开发了三种知情分配方法,并对其中一种进行了彻底研究以确定其影响。围绕分配方法的多个关键假设的违反导致所选知情分配方法和盲目随机分配方法之间没有明显差异。这些假设的失败表明,现有的培训方法和/或标题不足以在MEA上产生足够有效的TA和学生成绩。讨论了如何违反这些假设以及如何解决这些假设以更好地调查研究问题的细节。

著录项

  • 作者

    Verleger, Matthew Alan.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Education Mathematics.;Education Curriculum and Instruction.;Engineering General.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 201 p.
  • 总页数 201
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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