A brief introduction to weakly supervised learning
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Abstract
Supervised learning techniques construct predictive models by learning from a large number of training examples, where each training example has a label indicating its ground-truth output. Though current techniques have achieved great success, it is noteworthy that in many tasks it is difficult to get strong supervision information like fully ground-truth labels due to the high cost of the data-labeling process. Thus, it is desirable for machine-learning techniques to work with weak supervision. This article reviews some research progress of weakly supervised learning, focusing on three typical types of weak supervision: incomplete supervision, where only a subset of training data is given with labels; inexact…
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Topics
Keywords
- Ground truth
- Computer science
- Construct (python library)
- Process (computing)
- Training set
- Machine learning
- Artificial intelligence
- Labeled data
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