Description Usage Arguments Value
View source: R/architectures.R
Defines network architecture for scAlign.
1 2 3 4 5 6 7 8 9 10 11  | encoder_large(
  inputs,
  input_size = NULL,
  complexity = 3,
  emb_size = 32,
  l2_weight = 1e-04,
  dropout = TRUE,
  dropout_rate = 0.3,
  is_training = TRUE,
  batch_norm = TRUE
)
 | 
inputs | 
 Mini-batch placeholder  | 
input_size | 
 Number of features per cell  | 
complexity | 
 Determines the depth and width of an automatically created network  | 
emb_size | 
 Number of hidden nodes in final (embedding) hidden layer  | 
l2_weight | 
 Weight on l2_regularizer  | 
dropout_rate | 
 Probability for dropout.  | 
is_training | 
 Determines if dropout and batch norm should be include in pass through network  | 
batch_norm | 
 Determines if batch normalization layers should be included  | 
Neural network graph op
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