Episode #452 from 5:06:56
Macroscopic behavior of neural networks
Another question that I think a lot about is at the end of the day, mechanistic interpolation is this very microscopic approach to interpolation. It's trying to understand things in a very fine-grained way, but a lot of the questions we care about are very macroscopic. We care about these questions about neural network behavior, and I think that's the thing that I care most about. But there's lots of other sort of larger-scale questions you might care about. And the nice thing about having a very microscopic approach is it's maybe easier to ask, is this true? But the downside is its much further from the things we care about. And so we now have this ladder to climb. And I think there's a question of will we be able to find, are there larger-scale abstractions that we can use to understand neural networks that can we get up from this very microscopic approach? Yeah. You've written about this as kind of organs question.
Why this moment matters
Another question that I think a lot about is at the end of the day, mechanistic interpolation is this very microscopic approach to interpolation. It's trying to understand things in a very fine-grained way, but a lot of the questions we care about are very macroscopic. We care about these questions about neural network behavior, and I think that's the thing that I care most about. But there's lots of other sort of larger-scale questions you might care about. And the nice thing about having a very microscopic approach is it's maybe easier to ask, is this true? But the downside is its much further from the things we care about. And so we now have this ladder to climb. And I think there's a question of will we be able to find, are there larger-scale abstractions that we can use to understand neural networks that can we get up from this very microscopic approach? Yeah. You've written about this as kind of organs question.