How Well Do Teachers Predict Students' Actions in Solving an Ill-Defined Problem in STEM Education: A Solution Using Sequential Pattern Mining.
Yu-Cheng LienWen-Jong WuYu-Ling LuPublished in: IEEE Access (2020)
Keyphrases
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