2min chapter

AXRP - the AI X-risk Research Podcast cover image

21 - Interpretability for Engineers with Stephen Casper

AXRP - the AI X-risk Research Podcast

CHAPTER

Benchmarking for Feature Saliency and Attribution

In terms of like the benchmark in this paper, if there's some difficulty, if these inputs in synthesis methods aren't very effective and maybe there are reasons to think that they might not. Do you think the way forward is to try to use this benchmark to improve those types of methods or do you think like coming up with like different approaches that could help on Trojans is a better kind of way forward for the interpretability space? Yeah, I think to quite an extent, I would want to be working on both. And I think most questions like this, is A better or is B better? You know, my answer is something like we want a toolbox, not a silver

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