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Learning from Rules Generalizing Labeled Exemplars

About

In many applications labeled data is not readily available, and needs to be collected via pain-staking human supervision. We propose a rule-exemplar method for collecting human supervision to combine the efficiency of rules with the quality of instance labels. The supervision is coupled such that it is both natural for humans and synergistic for learning. We propose a training algorithm that jointly denoises rules via latent coverage variables, and trains the model through a soft implication loss over the coverage and label variables. The denoised rules and trained model are used jointly for inference. Empirical evaluation on five different tasks shows that (1) our algorithm is more accurate than several existing methods of learning from a mix of clean and noisy supervision, and (2) the coupled rule-exemplar supervision is effective in denoising rules.

Abhijeet Awasthi, Sabyasachi Ghosh, Rasna Goyal, Sunita Sarawagi• 2020

Related benchmarks

TaskDatasetResultRank
Question ClassificationTREC
Accuracy80.2
205
Text ClassificationAGNews
Accuracy68.5
119
Sentiment ClassificationIMDB
Accuracy63.85
41
Word Sense DisambiguationWiC (dev)
Accuracy54.48
32
Sentiment ClassificationYelp
Accuracy76.29
24
Relation ClassificationChemProt
Accuracy53.48
13
Slot FillingMIT-R
Accuracy74.3
13
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