this post was submitted on 16 Jan 2024
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[–] Even_Adder@lemmy.dbzer0.com 3 points 10 months ago (1 children)

It doesn't necessarily have to shift away from diversity biases. I think with care, you can preserve the biases that matter most. That was just their first shot at it, this seems like something you'd get better at over time.

[–] jarfil@beehaw.org 2 points 10 months ago

I guess their main shortcoming was the cultural training set. I'm still unconvinced that level of fine tuning is possible without increasing model size, but we'll see what happens if/when someone curates a much larger set with cultural labeling.

The labels might also need to be more granular, like "culture:subculture:period", or something... which is kind of a snakes nest by itself.