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首页> 外文期刊>The American statistician >Facilitating Authentic Practice for Early Undergraduate Statistics Students
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Facilitating Authentic Practice for Early Undergraduate Statistics Students

机译:促进早期本科统计学生的真实实践

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In current curricula, authentic statistical practice generally only occurs in capstone projects undertaken by advanced undergraduate and Master's students. We argue that deferring practice is a mistake: undergraduate students should achieve experience via repeated practice from their first years onward, to achieve heightened levels of confidence and competence prior to graduation. However, statistical practice is not a "one size fits all" enterprise: for instance, elements of a capstone experience, such as extensive data preprocessing, may be out of place in earlier practice settings due to less-experienced students' relative lack of coding skill. We describe a course we have implemented at Carnegie Mellon University, currently open to second-year students, that provides a circumscribed opportunity for statistical practice that limits coding breadth, uses fully curated data, treats statistical learning models as "gray boxes" to be understood qualitatively, and provides open-ended semester-long projects that students pursue outside of class. We show how pre- and post-course assessment tests and retrospective surveys indicate clear gains in the students' knowledge of, and attitudes toward, statistical practice. Given its clear benefits, we feel that statistics and data science programs should offer a course like the one we describe to all undergraduate students pursuing statistics and data science degrees.
机译:在当前的课程中,正宗的统计实践通常只发生在先进本科和硕士学位所作的Capstone项目中。我们认为推迟练习是一个错误:本科生应该从他们的第一年开始实现经验,从而在毕业前取得提高的信心和能力水平。然而,统计实践不是“一种尺寸适合所有”的企业:例如,由于经验丰富的学生相对缺乏编码,超大数据预处理等CAPStone经验的元素可能不合适技能。我们描述了我们在卡内基梅隆大学实施的课程,目前向二年年级学生开放,为限制编码宽度的统计实践提供了一个危险的机会,使用完全策划数据,将统计学习模型视为“灰色框”作为“灰色框”被理解定性地,提供开放式学期的学生长期以来,学生在课外追求。我们展示了课程前和后期评估测试和回顾性调查表明学生对学生知识的明确提升,统计实践。鉴于其明显的福利,我们认为统计和数据科学计划应提供像我们向所有本科生追求统计和数据科学学位的本科生的课程。

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