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首页> 外文期刊>European journal of physics: A journal of the European Physical Society >Online data repositories as educational resources? A learning environment covering formal and informal inferential statistics ideas in scientific inquiry
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Online data repositories as educational resources? A learning environment covering formal and informal inferential statistics ideas in scientific inquiry

机译:在线数据存储库作为教育资源? 一个学习环境,涵盖科学调查中正式和非正式的推理统计思想

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摘要

Statistical ideas play a vital role in scientific investigations. For students enrolling in physics-related courses at university, the need to interpret data is set from the start. Analysing graphical representations of data is seen as one way to acquaint students with statistical thinking without relying on pre-knowledge about formal statistics for applying more sophisticated methods like multiple regression. We designed a learning environment, which supports students in understanding the exploratory analysis of multivariate datasets as well as the concept of multiple regression. For phase one of the learning path, we work with exploratory data analysis using the software TinkerPlots, which has several major advantages in contrast to conventional software. Only in phase two formal inferential statistics is applied. We have chosen a context-oriented approach for this learning environment, using the particulate matter concentration in an Austrian city as topic. By providing data from online data repositories in a simplified way, students get the opportunity to work with real data. The amount of this data exceeds the number of measurements collected in typical training labs in an authentic and feasible way. In this article, the design of the intervention and a range of results originating from the triggered learning paths will be presented and discussed. To sum it up, we illustrate advantages and opportunities of the use of innovative software, online data repositories and informal statistics for a first introduction of methods of formal statistics like multiple regression.
机译:统计思想在科学调查中发挥着至关重要的作用。对于招收大学物理学课程的学生来说,从一开始就可以设置解释数据的需要。分析数据的图形表示被视为熟悉学生统计思想的一种方式,而无需依赖关于正式统计的预先了解,以应用更复杂的方法,如多元回归。我们设计了一个学习环境,支持学生了解多变量数据集的探索性分析以及多元回归的概念。对于学习路径之一,我们使用软件Tinkerplots与探索性数据分析一起工作,与传统软件相比具有几个主要优点。仅适用于阶段两阶段正式的推理统计数据。我们选择了一个面向上下文的学习环境方法,使用奥地利城市的颗粒物质集中作为主题。通过以简化的方式从在线数据存储库提供数据,学生可以获得与真实数据一起使用的机会。这种数据的数量超过了以真实的和可行的方式在典型的培训实验室中收集的测量数量。在本文中,将介绍并讨论源自触发学习路径的干预和一系列结果。为了总结一下,我们说明了使用创新软件,在线数据存储库和非正式统计数据的优缺点,以便首次引入正式统计数据等多元回归。

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