install.packages('keras')targets are in the top k predictions.x in train phase, and alt otherwise.axis.indices in the tensor reference.variables w.r.t. loss.x in test phase, and alt otherwise.x to zero at random, while scaling the entire tensor.x is a placeholder.x by n.x is a symbolic tensor.message and the tensor value when evaluated.x is a Keras tensor.x to new_x.x by adding increment.axis.R tensors into a rank R+1 tensor.x by subtracting decrement.variables but with zero gradient w.r.t. every other variable.