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High-resolution version of Figure 7e in manuscript. |
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High-resolution version of Figure 8 in manuscript. |
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High-resolution version of Supplement S1 in manuscript. |
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High-resolution version of Supplement S2a in manuscript. |
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Dec 21, 2021 - NTNU – Norwegian University of Science and Technology
Kaspersen, Eivind, 2021, "Eye-tracking data for classification of geometric shapes", https://doi.org/10.18710/TEJDSF, DataverseNO, V1
Eye-tracking data for geometric classification tasks for abstract and non-abstract thinking. How to develop and assess abstraction processes are longstanding methodical problems in mathematics education. Recently, the advent of eye tracking technology has spurred a discussion abo... |
Dec 21, 2021 -
Eye-tracking data for classification of geometric shapes
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