LGCLCVMLMay 8, 2024

Interpretability Needs a New Paradigm

MILA
arXiv:2405.05386v213 citationsh-index: 43
Originality Incremental advance
AI Analysis

This work addresses the critical issue of interpretability for AI safety, but it is incremental as it builds on existing paradigms without introducing a completely new method.

The paper tackles the problem of ensuring faithfulness in interpretability paradigms to prevent dangerous overconfidence in AI, and proposes three emerging paradigms that focus on designing or optimizing models for measurable or inherent faithfulness.

Interpretability is the study of explaining models in understandable terms to humans. At present, interpretability is divided into two paradigms: the intrinsic paradigm, which believes that only models designed to be explained can be explained, and the post-hoc paradigm, which believes that black-box models can be explained. At the core of this debate is how each paradigm ensures its explanations are faithful, i.e., true to the model's behavior. This is important, as false but convincing explanations lead to unsupported confidence in artificial intelligence (AI), which can be dangerous. This paper's position is that we should think about new paradigms while staying vigilant regarding faithfulness. First, by examining the history of paradigms in science, we see that paradigms are constantly evolving. Then, by examining the current paradigms, we can understand their underlying beliefs, the value they bring, and their limitations. Finally, this paper presents 3 emerging paradigms for interpretability. The first paradigm designs models such that faithfulness can be easily measured. Another optimizes models such that explanations become faithful. The last paradigm proposes to develop models that produce both a prediction and an explanation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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