Artificial General Intelligence (AGI) Show with Soroush Pour cover image

Ep 14 - Interp, latent robustness, RLHF limitations w/ Stephen Casper (PhD AI researcher, MIT)

Artificial General Intelligence (AGI) Show with Soroush Pour

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Challenges and Limitations in Interpretability Research

The chapter explores the challenges faced in interpretability within AI research, discussing limitations due to a lack of concrete benchmarks and the risks of biased interpretations. It delves into the concept of attribution methods, highlighting their failures in practical applications and the complexity of attributing behaviors within neural networks. The chapter also delves into the topic of sparse autoencoders, discussing their potential applications in AI research and the debate around their effectiveness and limitations.

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