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Adrian Adams; Lauren Barth-Cohen – CBE - Life Sciences Education, 2024
In undergraduate research settings, students are likely to encounter anomalous data, that is, data that do not meet their expectations. Most of the research that directly or indirectly captures the role of anomalous data in research settings uses post-hoc reflective interviews or surveys. These data collection approaches focus on recall of past…
Descriptors: Undergraduate Students, Physics, Science Instruction, Laboratory Experiments
Guler, Mustafa; Gursoy, Kadir; Guven, Bulent – Cogent Education, 2016
Understanding and interpreting biased data, decision-making in accordance with the data, and critically evaluating situations involving data are among the fundamental skills necessary in the modern world. To develop these required skills, emphasis on statistical literacy in school mathematics has been gradually increased in recent years. The…
Descriptors: Foreign Countries, Middle School Students, Grade 8, Data Interpretation
Bull, Ally – New Zealand Council for Educational Research, 2015
Science capabilities are a set of ideas for teachers to think with about science education. There are five: gathering and interpreting data, using evidence, critiquing evidence, interpreting representations of science, and engaging with science. This paper explores what student progress in developing capabilities might look like. It draws on…
Descriptors: Lifelong Learning, Science Education, Data Collection, Data Interpretation
Whitin, Phyllis; Whitin, David J. – Language Arts, 2008
Being a critical reader of data is an integral part of being fully literate in today's information age. In this article the authors underscore the interdisciplinary importance of this stance by drawing upon theoretical perspectives from both the fields of language and mathematics. They argue that all texts, including statistical ones, must be…
Descriptors: Thinking Skills, Heuristics, Grade 5, Statistics
Marshall, Linda; Swan, Paul – Australian Primary Mathematics Classroom, 2006
Statistical literacy is defined as "the ability to read and interpret data: the ability to use statistics as evidence in arguments. Statistical literacy is a competency: the ability to think critically about statistics" (Schield, p. 2). When a definition of statistical literacy is considered it can be seen that all students can manage a…
Descriptors: Young Children, Reading Ability, Statistics, Critical Thinking

Wight, Jonathan B. – Journal of Economic Education, 1999
Describes an exercise, step-by-step, for developing critical thinking while exposing students to electronic-data skills. Argues that the exercise enhances critical thinking by forcing students to deal with issues of data definition, collection, and interpretation, and by providing an active learning experience with real-world data. (DSK)
Descriptors: Active Learning, Computer Uses in Education, Critical Thinking, Data Analysis