Sorry, not sure how to ! post so it opens in your instance.
TL;DR
Any result is going to be biased. If it generated a crab wearing liederhosen, it's obviously a bias towards crabs. You can't not have a biased output because the prompting is controlling the bias. There's no cause for concern here. The model is outputting by default the general trend of the data it was trained with. If it was trained with crabs, it would be generating crab-like images.
I recall a somewhat similar incident when I was showing an in-law of mine how Stable Diffusion worked a while back. She's of Indian descent, and she asked Stable Diffusion to generate a picture of an Indian woman. All of the women it generated had Bindis and other "traditional" Indian cultural garb on, and she was initially kind of annoyed by that. But I explained that that's because most of the photos of women in the training set that were explicitly tagged as Indian were dressed that way, whereas the rest of the Indian women in the training set probably weren't explicitly tagged. They were just women.
It was kind of interesting trying to figure out which option was more biased. Realizing that there was an understandable reason behind that helped ease her annoyance.
Yes, but they trained on easily accessible data in large amounts. Which actually says that stock photo websites are the biased ones there.
No model can be trained on an equal amount of diverse data for everyone, and it's not supposed to anyway. I bet it was hardly if at all trained on Mongolian goat herders, but you could hardly say it's biased against them, just that there wasn't an easily accessible large amount of pictures of them.