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by goodtraveler
1532 days ago
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OpenAI shuttered their robotics division because they did not see any viable path to commercial applications so they pivoted to generating pixel art. Similarly, DeepMind has not been making any claims of achieving AGI because they're smart enough to realize that statistical modeling of physical systems is a very small subset of what counts as intelligence. I'm not dismissive of the progress in the field. What I find confusing is why so many people are convinced that what we are seeing with these abstract symbol shuffling systems is intelligence. All it does is confuse the average person about what these tools are capable of because at the moment they are only capable of amplifying biases in existing data sets. No statistical model can escape this trap and at the moment we essentially have automated bias amplifiers that are being sold as some kind of revolution in designing intelligent systems. |
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"No statistical model can escape this trap"
Your claim here is that intelligence requires innovation?
AlphaGo certainly went beyond the bounds of the existing training data. Likewise, zero-shot learning (as we see in Dall-e 2) demonstrates the ability to combine concepts combinatorially, rather than drawing from raw prior observation.
I still wouldn't call this intelligence, but it's yet another indication of how the goalposts move in the conversation. (Never mind that we typically at this point ask to satisfy indicators which most humans could not satisfy...)
For just about any simple indicator of intelligence there's been a concerted effort to make a neutral network with that property. And most of them have had a degree of success, moreso over time. The 'confusion' comes because these simple indicators have repeatedly been set and overcome.