5min chapter

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#033 Prof. Karl Friston - The Free Energy Principle

Machine Learning Street Talk (MLST)

CHAPTER

The Resolution of Uncertainty in Deep Learning

The implicit imperative to reduce uncertainty can often be described in terms of responding to salience or epistemic affordance, just so if I did that, what would happen? What information would I gain? Novelty you mentioned. So technically what we tend to do is to talk about the resolution of uncertainty or the information gain That is formally described by a KL divergence between my beliefs about states of the world with and without those sensory samples or observations that I would get if I did it.

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