Flexible Model Interpretability through Natural Language Model Editing

17 Nov 2023  ·  Karel D'Oosterlinck, Thomas Demeester, Chris Develder, Christopher Potts ·

Model interpretability and model editing are crucial goals in the age of large language models. Interestingly, there exists a link between these two goals: if a method is able to systematically edit model behavior with regard to a human concept of interest, this editor method can help make internal representations more interpretable by pointing towards relevant representations and systematically manipulating them.

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