Tamar Fuhrmann, Leah Rosenbaum, Aditi Wagh, Adelmo Eloy, Jacob Wolf, Paulo Blikstein, Michelle Wilkerson
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Right but wrong: How students' mechanistic reasoning and conceptual understandings shift when designing agent‐based models using data
When learning about scientific phenomena, students are expected to mechanistically explain how underlying interactions produce the observable phenomenon and conceptually connect the observed phenomenon to canonical scientific knowledge. This paper investigates how the integration of the complementary processes of designing and refining computational models using real‐world data can support students in developing mechanistic and canonically accurate explanations of diffusion. Specifically, we examine two types of shifts in how students explain diffusion as they create and refine computational models using real‐world data: a shift towards mechanistic reasoning and a shift from noncanonical to canonical explanations. We present descriptive statistics for the whole class as well as three student work examples to illustrate these two shifts as 6th grade students engage in an 8‐day unit on the diffusion of ink in hot and cold water. Our findings show that (1) students develop mechanistic explanations as they build agent‐based models, (2) students' mechanistic reasoning can co‐exist with noncanonical explanations, and (3) students shift their thinking toward canonical explanations after comparing their models against data. These findings could inform the design of modeling tools that support learners in both expressing a diverse range of mechanistic explanations of scientific phenomena and aligning those explanations with canonical science.
期刊介绍:
Science Education publishes original articles on the latest issues and trends occurring internationally in science curriculum, instruction, learning, policy and preparation of science teachers with the aim to advance our knowledge of science education theory and practice. In addition to original articles, the journal features the following special sections: -Learning : consisting of theoretical and empirical research studies on learning of science. We invite manuscripts that investigate learning and its change and growth from various lenses, including psychological, social, cognitive, sociohistorical, and affective. Studies examining the relationship of learning to teaching, the science knowledge and practices, the learners themselves, and the contexts (social, political, physical, ideological, institutional, epistemological, and cultural) are similarly welcome. -Issues and Trends : consisting primarily of analytical, interpretive, or persuasive essays on current educational, social, or philosophical issues and trends relevant to the teaching of science. This special section particularly seeks to promote informed dialogues about current issues in science education, and carefully reasoned papers representing disparate viewpoints are welcomed. Manuscripts submitted for this section may be in the form of a position paper, a polemical piece, or a creative commentary. -Science Learning in Everyday Life : consisting of analytical, interpretative, or philosophical papers regarding learning science outside of the formal classroom. Papers should investigate experiences in settings such as community, home, the Internet, after school settings, museums, and other opportunities that develop science interest, knowledge or practices across the life span. Attention to issues and factors relating to equity in science learning are especially encouraged.. -Science Teacher Education [...]