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ROME: Locating and Editing Factual Associations in GPT (Paper Explained & Author Interview)

Yannic Kilcher Videos (Audio Only)

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How Does Cassanity Tracing Work?

Rome: Can we achieve generalization when we do edits? When we change one thing, does something else change? Or is the edit specific. Rome: We show that the insights that we get can yield a pretty useful model editor That seems to achieve generalization, specificity, and fluency preservation all pretty well. The idea here is to figure out where in these hidden states, so in these bubbles right here, or this bubble, where is the fact that Seattle should be the output of the sentence? Where is that kind of realized? And then there's a residual connection around that.

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