Download presentation
Presentation is loading. Please wait.
1
CS539: Project 3 Zach Pardos
2
Assistments Online Dataset
Math question response data from 592 students. 1,143 math question attributes {correct, incorrect} Average of 200 questions answered per student (lots of missing values) Class: MCAS SCORE {0-29}
3
Assistments Online Dataset
Skill models: 1, 5, 39, 106
4
Assistments Online Dataset
How well can ANNs fit the dataset with only 1, 5, 39 or 106 hidden nodes? Default Weka values used for ANN training Epochs: 500 Learning: 0.3 Momentum: 0.2 No validation set Training-set for testing
5
Assistments Online Dataset
Results for training-set testing: With 1 Hidden Node: Correctly Classified Instances Incorrectly Classified Instances Relative absolute error % With 5 Hidden Nodes: Correctly Classified Instances Incorrectly Classified Instances Relative absolute error %
6
Assistments Online Dataset
Results for training-set testing: With 39 Hidden Nodes: Correctly Classified Instances Incorrectly Classified Instances Relative absolute error % With 106 Hidden Nodes: Correctly Classified Instances Incorrectly Classified Instances Relative absolute error %
7
Assistment Online Dataset
Conclusion: 39 and 106 models predict very well. How well can ANNs generalize and predict instances they haven’t trained on? Next up: 10-fold cross validation
8
Assistment Online Dataset
9
Assistment Online Dataset
Conclusions: ANNs very good at fitting data Not as good at predicting unseen cases Possible that more nodes are required to properly generalize (more CPU!)
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.