Teach Me to Explain: A Review of Datasets for Explainable NLP.
Sarah Wiegreffe, Ana Marasović
Abstract
Explainable NLP (ExNLP) has increasingly focused on collecting human-annotated explanations. These explanations are used downstream in three ways: as data augmentation to improve performance on a predictive task, as a loss signal to train models to produce explanations for their predictions, and as a means to evaluate the quality of model-generated explanations. In this review, we identify three predominant classes of explanations (highlights, free-text, and structured), organize the literature on annotating each type, point to what has been learned to date, and give recommendations for collecting ExNLP datasets in the future.
Topics & Concepts
Task (project management)Computer scienceNatural language processingArtificial intelligencePoint (geometry)Quality (philosophy)Machine learningData scienceEpistemologyEconomicsMathematicsPhilosophyManagementGeometryTopic ModelingExplainable Artificial Intelligence (XAI)Natural Language Processing Techniques