2min chapter

Machine Learning Street Talk (MLST) cover image

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

Machine Learning Street Talk (MLST)

CHAPTER

Machine Learning Models - The Labels

We have this anthropocentric way of reducing things which are intelligible to us. As soon as we reduce things down to a class label, we confer lots of bias in the process. There's annotated bias, there's also higher annotated variance in a lot of these concepts like toxicity. Even if we assume that we as humans are perfect at determining what is toxic, it's really expensive to get human annotations uncomprehensive. Most of the world is unsupervised and we now have these massive data sets which are largely crawled from really the web that don't have comprehensive labels.

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