November 2020
Intermediate to advanced
296 pages
9h 8m
English
Content preview from Probabilistic Deep Learning
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index
Numerics
A
Akaike Information Criterion (AIC) 132
aleatoric uncertainty 129, 264
automatic differentiation 79-80
B
backpropagation (reverse-mode differentiation) 80-90, 264
dynamic graph frameworks 88-90
banknotes, identifying fakes 30-38
for probabilistic models 207-228
coin toss as Hello World example for Bayesian models 213-222
prediction with Bayesian models 208-212
training with Bayesian models 208-212
MC dropout as approximate 245-251
classical dropout during training 246-249
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