2min chapter

Machine Learning Street Talk (MLST) cover image

#92 - SARA HOOKER - Fairness, Interpretability, Language Models

Machine Learning Street Talk (MLST)

CHAPTER

Is There a Tyranny of Objectives in Interpretability?

There's a huge focus on actually kind of training the model with fairness objectives in mind, which is a completely different way of thinking about it. If you think about post-chalk methods, it's almost like you are at the finish line, and then you're trying to do acrobatics to explain the logic. That can be very useful because there are different interpretability use cases. In some ways, you want to know the relative. What does the model do really poorly at? What does it do well at?"

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