Weakly supervised learning

Weak supervision is a branch of machine learning where noisy, limited, or imprecise sources are used to provide supervision signal for labeling large amounts of training data in a supervised learning setting. This approach alleviates the burden of obtaining hand-labeled data sets, which can be costly or impractical. Instead, inexpensive weak labels are employed with the understanding that they are imperfect, but can nonetheless be used to create a strong predictive model.

See AI/Transfer learning, AI/Active learning and AI/Semi-supervised learning

Resources

References

Incomplete supervision

Inexact supervision

Inaccurate supervision