I wish to use a loss layer of type `InfogainLoss`

in my model. But I am having difficulties defining it properly.

Is there any tutorial/example on the usage of

`INFOGAIN_LOSS`

layer?Should the input to this layer, the class probabilities, be the output of a

`SOFTMAX`

layer, or is it enough to input the "top" of a fully connected layer?

`INFOGAIN_LOSS`

requires three inputs: class probabilities, labels and the matrix `H`

.
The matrix `H`

can be provided either as a layer parameters `infogain_loss_param { source: "fiename" }`

.

Suppose I have a python script that computes `H`

as a `numpy.array`

of shape `(L,L)`

with `dtype='f4'`

(where `L`

is the number of labels in my model).

How can I convert my

`numpy.array`

into a`binproto`

file that can be provided as a`infogain_loss_param { source }`

to the model?Suppose I want

`H`

to be provided as the third input (bottom) to the loss layer (rather than as a model parameter). How can I do this?

Do I define a new data layer which "top" is`H`

? If so, wouldn't the data of this layer be incremented every training iteration like the training data is incremented? How can I define multiple unrelated input "data" layers, and how does caffe know to read from the training/testing "data" layer batch after batch, while from the`H`

"data" layer it knows to read only once for all the training process?