Which Spurious Correlations Impact Reasoning In NLI Models? A Visual Interactive Diagnosis Through Data-constrained Counterfactuals · The Large Language Model Bible Contribute to LLM-Bible

Which Spurious Correlations Impact Reasoning In NLI Models? A Visual Interactive Diagnosis Through Data-constrained Counterfactuals

Chan Robin, Amini Afra, El-assady Mennatallah. Arxiv 2023

[Paper]    
Ethics And Bias GPT Model Architecture Reinforcement Learning Security Training Techniques

We present a human-in-the-loop dashboard tailored to diagnosing potential spurious features that NLI models rely on for predictions. The dashboard enables users to generate diverse and challenging examples by drawing inspiration from GPT-3 suggestions. Additionally, users can receive feedback from a trained NLI model on how challenging the newly created example is and make refinements based on the feedback. Through our investigation, we discover several categories of spurious correlations that impact the reasoning of NLI models, which we group into three categories: Semantic Relevance, Logical Fallacies, and Bias. Based on our findings, we identify and describe various research opportunities, including diversifying training data and assessing NLI models’ robustness by creating adversarial test suites.

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