2min chapter

"The Cognitive Revolution" | AI Builders, Researchers, and Live Player Analysis cover image

E39: Seeing is Believing with MIT’s Ziming Liu

"The Cognitive Revolution" | AI Builders, Researchers, and Live Player Analysis

CHAPTER

How to Optimize a Loss Function

L1 regularization is again motivated by the same thing. We want to make the network sparse. We don't want to have like wasteful kind of needless extra connections. So let's just penalize in this case, the weight itself, right? Like we want to optimize a loss function that includes both like prediction accuracy, but now we're adding on to it. And we also want to minimize the total weights in the network overall.

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