Predicting achievement and providing support before STEM majors begin to fail

Computers & Education - Tập 158 - Trang 103999 - 2020
Matthew L. Bernacki1, Michelle M. Chavez2, P. Merlin Uesbeck2
1University of North Carolina, CB3500 Peabody Hall 113, Chapel Hill, NC, 25799, USA
2University of Nevada, Las Vegas, 4505 South Maryland Parkway, Las Vegas, NV, 89154, USA

Tài liệu tham khảo

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