articleAug 24, 2008Closed access
Learning classifiers from only positive and unlabeled data
University of California, San Diego
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Abstract
The input to an algorithm that learns a binary classifier normally consists of two sets of examples, where one set consists of positive examples of the concept to be learned, and the other set consists of negative examples. However, it is often the case that the available training data are an incomplete set of positive examples, and a set of unlabeled examples, some of which are positive and some of which are negative. The problem solved in this paper is how to learn a standard binary classifier given a nontraditional training set of this nature.
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Authors
2Topics & keywords
Topics
Keywords
- Training set
- Classifier (UML)
- Artificial intelligence
- Computer science
- Binary classification
- Pattern recognition (psychology)
- Binary number
- Labeled data
UN Sustainable Development Goals
- Quality Education
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