Feature Acquisition With Imbalanced Training Data
TBMG-9433
03/01/2011
- Content
This work considers cost-sensitive feature acquisition that attempts to classify a candidate datapoint from incomplete information. In this task, an agent acquires features of the datapoint using one or more costly diagnostic tests, and eventually ascribes a classification label. A cost function describes both the penalties for feature acquisition, as well as misclassification errors.
- Citation
- "Feature Acquisition With Imbalanced Training Data," Mobility Engineering, March 1, 2011.