Logical Reasoning with Span-Level Predictions for Interpretable and Robust NLI Models
It addresses the problem of interpretability and robustness in NLI models for AI researchers, offering a novel approach that is not incremental.
The paper tackles the issue of Natural Language Inference (NLI) models relying on dataset biases by introducing a logical reasoning framework that improves interpretability without sacrificing accuracy, achieving near-full performance on SNLI and boosting out-of-distribution performance by up to 16% with limited data.
Current Natural Language Inference (NLI) models achieve impressive results, sometimes outperforming humans when evaluating on in-distribution test sets. However, as these models are known to learn from annotation artefacts and dataset biases, it is unclear to what extent the models are learning the task of NLI instead of learning from shallow heuristics in their training data. We address this issue by introducing a logical reasoning framework for NLI, creating highly transparent model decisions that are based on logical rules. Unlike prior work, we show that improved interpretability can be achieved without decreasing the predictive accuracy. We almost fully retain performance on SNLI, while also identifying the exact hypothesis spans that are responsible for each model prediction. Using the e-SNLI human explanations, we verify that our model makes sensible decisions at a span level, despite not using any span labels during training. We can further improve model performance and span-level decisions by using the e-SNLI explanations during training. Finally, our model is more robust in a reduced data setting. When training with only 1,000 examples, out-of-distribution performance improves on the MNLI matched and mismatched validation sets by 13% and 16% relative to the baseline. Training with fewer observations yields further improvements, both in-distribution and out-of-distribution.