this post was submitted on 27 Feb 2024
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I extremely doubt that hallucination is a limitation in final output. It may be an inevitable part of the process, but it's almost definitely a surmountable problem.
Just off the top of my head I can imagine using two separate LLMs for a final output, the first one generates an initial output, and the second one verifies whether what it says is accurate. The chance of two totally independent LLMs having the same hallucination is probably very low. And you can add as many additional separate LLMs for re-verification as you like. The chance of a hallucination making it through multiple LLM verifications probably gets close to zero.
While this would greatly multiply the resources required, it's just a simple example showing that hallucinations are not inevitable in final output
That's not how LLMs work.
Super short version is that LLMs probabilistically determine the next word most likely to occur in a sequence. They do this using Statistical Models (like what your cell phone's auto complete uses); Transformers (rating the importance of preceding words, so the model can "focus" on the most important words); and Relatedness (a measure of how closely linked different words/phrases are to reach other in meaning).
With increasingly large models, LLMs can build a more accurate representation of Relatedness across a wider range of topics. With enough examples, LLMs can infinitely generate content that is closely Related to a query.
So a small LLM can make sentences that follow writing conventions but are nonsense. A larger LLM can write intelligibly about topics that are frequently included in the training materials. Huge LLMs can do increasingly nuanced things like "explain" jokes.
LLMs are not capable of evaluating truth or facts. It's not part of the algorithm. And it doesn't matter how big they get. At best, with enough examples to build a stronger Relatedness dataset, they are more likely to "stay on topic" and return results that are actually similar to what is being asked.
No, I've used LLMs to do exactly this, and it works. You prompt it with a statement and ask "is this true, yes or no?" It will reply with a yes or no, and it's almost always correct. Do this verification through multiple different LLMs and it would eliminate close to 100% of hallucinations.
EDIT
I just tested it multiple times in chatgpt4, and it got every true/false answer correct.
You seem very certain on this approach, but you gave no sources so far. Can you back this up with actual research or is this just based on your personal experience with chatgpt4?