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by ricardobeat
305 days ago
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That’s what has been seen in practice though. SOTA LLMs have been shown again and again to solve problems unseen in their data set; and despite their shortcomings they have become extremely useful for a wide variety of tasks. |
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Every result is explainable by has having come from training data. That's the null hypothesis.
The alternative hypothesis is that it's not explainable as having come from training data. That's a hard-to-believe, hard-to-prove negative.
You don't get anything out of any computational process that you didn't put in.