Active Learning With Irrelevant Examples
TBMG-6310
11/01/2009
- Content
An improved active learning method has been devised for training data classifiers. One example of a data classifier is the algorithm used by the United States Postal Service since the 1960s to recognize scans of handwritten digits for processing zip codes. Active learning algorithms enable rapid training with minimal investment of time on the part of human experts to provide training examples consisting of correctly classified (labeled) input data. They function by identifying which examples would be most profitable for a human expert to label. The goal is to maximize classifier accuracy while minimizing the number of examples the expert must label.
- Citation
- "Active Learning With Irrelevant Examples," Mobility Engineering, November 1, 2009.