A Causal Lens for Evaluating Faithfulness Metrics
- URL: http://arxiv.org/abs/2502.18848v1
- Date: Wed, 26 Feb 2025 05:35:53 GMT
- Title: A Causal Lens for Evaluating Faithfulness Metrics
- Authors: Kerem Zaman, Shashank Srivastava,
- Abstract summary: We present Causal Diagnosticity, a framework to evaluate faithfulness metrics for natural language explanations.<n>Our framework employs the concept of causal diagnosticity, and uses model-editing methods to generate faithful-unfaithful explanation pairs.
- Score: 13.755228271325205
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large Language Models (LLMs) offer natural language explanations as an alternative to feature attribution methods for model interpretability. However, despite their plausibility, they may not reflect the model's internal reasoning faithfully, which is crucial for understanding the model's true decision-making processes. Although several faithfulness metrics have been proposed, a unified evaluation framework remains absent. To address this gap, we present Causal Diagnosticity, a framework to evaluate faithfulness metrics for natural language explanations. Our framework employs the concept of causal diagnosticity, and uses model-editing methods to generate faithful-unfaithful explanation pairs. Our benchmark includes four tasks: fact-checking, analogy, object counting, and multi-hop reasoning. We evaluate a variety of faithfulness metrics, including post-hoc explanation and chain-of-thought-based methods. We find that all tested faithfulness metrics often fail to surpass a random baseline. Our work underscores the need for improved metrics and more reliable interpretability methods in LLMs.
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