Difference between revisions of "Short-term Performance and Learning Gains Prediction"

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Ogan et al. (2015) [https://link.springer.com/content/pdf/10.1007/s40593-014-0034-8.pdf pdf]
Ogan et al. (2015) [https://link.springer.com/content/pdf/10.1007/s40593-014-0034-8.pdf pdf]
*Multi-national model predicting learning gains from student's help-seeking behavior
*Multi-national models predicting learning gains from student's help-seeking behavior
*Both U.S. and combined model performed extremely poorly for Costa Rica
*Models built on only U.S.or combined data sets performed extremely poorly for Costa Rica
*U.S. model outperformed for Philippines than when trained with its own data set
*Models performed better when built on and applied for the dataset, except for Philippines which was outperformed slightly by U.S. model





Revision as of 07:22, 18 May 2022

Ogan et al. (2015) pdf

  • Multi-national models predicting learning gains from student's help-seeking behavior
  • Models built on only U.S.or combined data sets performed extremely poorly for Costa Rica
  • Models performed better when built on and applied for the dataset, except for Philippines which was outperformed slightly by U.S. model


Yudelson et al. (2014) pdf

  • Models discovering generalizable sub-populations of students across different schools to predict students' learning with Carnegie Learning’s Cognitive Tutor (CLCT)
  • Models trained on schools with a high proportion of low-SES student performed worse than those trained with medium or low proportion
  • Models trained on schools with low, medium proportion of SES students performed similarly well for schools with high proportions of low-SES students