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How the Mastery Rubric for Statistical Literacy Can Generate Actionable Evidence about Statistical and Quantitative Learning Outcomes

机译:精通统计素养的专论如何才能产生有关统计和定量学习成果的可行证据

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Statistical literacy is essential to an informed citizenry; and two emerging trends highlight a growing need for training that achieves this literacy. The first trend is towards “big” data: while automated analyses can exploit massive amounts of data, the interpretation—and possibly more importantly, the replication—of results are challenging without adequate statistical literacy. The second trend is that science and scientific publishing are struggling with insufficient/inappropriate statistical reasoning in writing, reviewing, and editing. This paper describes a model for statistical literacy (SL) and its development that can support modern scientific practice. An established curriculum development and evaluation tool—the Mastery Rubric—is integrated with a new, developmental, model of statistical literacy that reflects the complexity of reasoning and habits of mind that scientists need to cultivate in order to recognize, choose, and interpret statistical methods. This developmental model provides actionable evidence, and explicit opportunities for consequential assessment that serves students, instructors, developers/reviewers/accreditors of a curriculum, and institutions. By supporting the enrichment, rather than increasing the amount, of statistical training in the basic and life sciences, this approach supports curriculum development, evaluation, and delivery to promote statistical literacy for students and a collective quantitative proficiency more broadly.
机译:统计素养对于知识渊博的公民至关重要。两种新兴趋势突显了对实现这种读写能力的培训的日益增长的需求。第一个趋势是朝着“大”数据发展:尽管自动化分析可以利用大量数据,但是如果没有足够的统计素养,结果的解释(可能更重要的是复制)将面临挑战。第二个趋势是,科学和科学出版界在写作,审阅和编辑方面的统计推理不足/不适当的情况下苦苦挣扎。本文介绍了可支持现代科学实践的统计素养(SL)模型及其发展。现有的课程开发和评估工具“精通专论”与新的,发展的统计素养模型相集成,该模型反映了科学家为了识别,选择和解释统计方法而需要培养的推理的复杂性和思维习惯。这种发展模型提供了可操作的证据,并为相应的评估提供了明确的机会,从而为学生,教师,课程的开发者/复习者/认证者以及机构提供服务。通过支持而不是增加基础和生命科学方面的统计培训的数量,此方法支持课程的开发,评估和交付,以提高学生的统计素养和更广泛的集体量化水平。

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