
[09] Kenneth Stanley - Efficient Evolution of Neural Networks through Complexification
The Thesis Review
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Exploring Open-Endedness in AI Innovation
This chapter investigates the philosophical underpinnings of innovation in artificial intelligence, highlighting the significance of understanding intelligence as a collective endeavor. It focuses on the NEAT algorithm and its evolutionary capabilities, contrasting it with modern methods like gradient descent while emphasizing the role of complexification in generating innovative solutions. Additionally, the discussion explores projects like POET, showcasing how evolving challenges alongside solutions fosters perpetual improvement in AI systems.
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