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Evaluating and Characterizing Human Rationales

Samuel Carton, Anirudh Rathore, Chenhao Tan

202038 citationsDOIOpen Access PDF

Abstract

Two main approaches for evaluating the quality of machine-generated rationales are: 1) using human rationales as a gold standard; and 2) automated metrics based on how rationales affect model behavior. An open question, however, is how human rationales fare with these automatic metrics. Analyzing a variety of datasets and models, we find that human rationales do not necessarily perform well on these metrics. To unpack this finding, we propose improved metrics to account for modeldependent baseline performance. We then propose two methods to further characterize rationale quality, one based on model retraining and one on using "fidelity curves" to reveal properties such as irrelevance and redundancy. Our work leads to actionable suggestions for evaluating and characterizing rationales.

Topics & Concepts

Computer scienceRetrainingFidelityRedundancy (engineering)Variety (cybernetics)Machine learningQuality (philosophy)Metric (unit)Artificial intelligenceBaseline (sea)Data miningEngineeringOperating systemBusinessInternational tradeTelecommunicationsGeologyOperations managementOceanographyEpistemologyPhilosophyExplainable Artificial Intelligence (XAI)Machine Learning and Data ClassificationMobile Crowdsensing and Crowdsourcing