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NeurIPS | 2022
Understanding Programmatic Weak Supervision via Source-aware Influence Function
Abstract
This paper proposes source-aware variation of Influence Function, which measures the influence of individual components in the Programmatic Weak Supervision pipeline, and can be used for multiple purposes such as understanding incorrect predictions, identifying mislabeling of sources, and improving the end model’s generalization performance.