
Machine Learning with PyTorch and Scikit-Learn
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Symbols
5×2 cross-validation 192
7-Zip
URL 248
A
accuracy
versus classification error 57
action-value function 682
estimation, with Monte Carlo 688
greedy policy, computing from 689
activation function, for multilayer neural network
selecting 400
activation functions, torch.nn module
reference link 406
activations
AdaBoost
applying, with scikit-learn 233-236
comparing, with gradient boosting 237
AdaBoost recognition 229
Adam optimizer 479
adaptive boosting
weak learners, leveraging 229
working 229-233
Adaptive Linear Neuron (Adaline) 35-37, 278
algorithm 337
implementation, converting into algorithm for logistic regression 66-68
advanced graph neural network literature
agglomerative clustering
applying, via scikit-learn 327, 328
AI winters
reference...