Probing Classifiers are Unreliable for Concept Removal and Detection
July 08, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Abhinav Kumar, Chenhao Tan, Amit Sharma
arXiv ID
2207.04153
Category
cs.LG: Machine Learning
Cross-listed
cs.CL
Citations
32
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Neural network models trained on text data have been found to encode undesirable linguistic or sensitive concepts in their representation. Removing such concepts is non-trivial because of a complex relationship between the concept, text input, and the learnt representation. Recent work has proposed post-hoc and adversarial methods to remove such unwanted concepts from a model's representation. Through an extensive theoretical and empirical analysis, we show that these methods can be counter-productive: they are unable to remove the concepts entirely, and in the worst case may end up destroying all task-relevant features. The reason is the methods' reliance on a probing classifier as a proxy for the concept. Even under the most favorable conditions for learning a probing classifier when a concept's relevant features in representation space alone can provide 100% accuracy, we prove that a probing classifier is likely to use non-concept features and thus post-hoc or adversarial methods will fail to remove the concept correctly. These theoretical implications are confirmed by experiments on models trained on synthetic, Multi-NLI, and Twitter datasets. For sensitive applications of concept removal such as fairness, we recommend caution against using these methods and propose a spuriousness metric to gauge the quality of the final classifier.
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