It’s Morphin’ Time! Combating Linguistic Discrimination with Inflectional Perturbations
Samson Tan, Shafiq Joty, Min‐Yen Kan, Richard Socher
Abstract
Training on only perfect Standard English corpora predisposes pre-trained neural networks to discriminate against minorities from nonstandard linguistic backgrounds (e.g., African American Vernacular English, Colloquial Singapore English, etc.). We perturb the inflectional morphology of words to craft plausible and semantically similar adversarial examples that expose these biases in popular NLP models, e.g., BERT and Transformer, and show that adversarially fine-tuning them for a single epoch significantly improves robustness without sacrificing performance on clean data. 1
Topics & Concepts
TransformerComputer scienceRobustness (evolution)Artificial intelligenceLinguisticsNatural language processingCraftVernacularSpeech recognitionHistoryPhilosophyEngineeringBiochemistryChemistryArchaeologyElectrical engineeringVoltageGeneNatural Language Processing TechniquesTopic ModelingAuthorship Attribution and Profiling