KL Divergence

Linear Digressions - En podcast af Ben Jaffe and Katie Malone

Kategorier:

Kullback Leibler divergence, or KL divergence, is a measure of information loss when you try to approximate one distribution with another distribution.  It comes to us originally from information theory, but today underpins other, more machine-learning-focused algorithms like t-SNE.  And boy oh boy can it be tough to explain.  But we're trying our hardest in this episode!

Visit the podcast's native language site