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by FlyingSaucer
1661 days ago
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I'm by no means an expert in the field but I do find it exceptionally interesting so i try and keep tabs on some of the research done by people who originated from the same group as Kenneth Stanley. Seems like many from this group now pursue open-endedness in AI and view evolution as a way towards this goal (or lack thereof). A very interesting evolution (ha!) of these ideas was presented in POET[0] towards evolution of agents in evolving environments. There is also an interesting paper about accelerating neural architecture search when generating fake training data in generative teacher networks[1]. Lastly, a paper that i find very very interesting but might not be as relevant but still is 'First return, then explore'[2] [0] : https://eng.uber.com/poet-open-ended-deep-learning/ [1] : http://proceedings.mlr.press/v119/such20a.html [2] : https://arxiv.org/pdf/2004.12919.pdf |
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