@froztbyte As for the issue of transparency, it’s ridiculously hard in real life. For example, for my website, I used a format I created called “blogdown”, which is Markdown combined with a template language to make it easy to write articles. I never cited my sources, nor do I think I could. From decades of programming, how can I cite everything I’ve ever learned from?
As for how AI is transparent for arriving at decisions, this falls into a separate category and requires different thinking.
You’re not just confident that asking chatGPT to explain it’s inner workings works exactly like a --verbose flag, you’re so sure that’s what happening that it apparently does not occur to you to explain why you think the output is not just more plausible text prediction based on its training weights with no particular insight into the chatGPT black box.
Is this confidence from an intimate knowledge of how LLMs work, or because the output you saw from doing this looks really really plausible? Try and give an explanation without projecting agency onto the LLM, as you did with “explain carefully why it rejects”
@earthquake You’re correct that projecting agency to the LLM is problematic, but in doing so, we get better quality results. I’ve argued that we need new words for LLMs instead of “think,” “understand,” “learn,” etc. We’re anthropomorphizing them and this makes people less critical and gradually shifts their attitudes in incorrect directions.
Unfortunately, I don’t think we’ll ever develop new words which more accurately reflect what is going on.