Due to the lack of resources of MLP for Multi-label, I intuitively devised an approach. Facing a target list with varying row size
[[0,1],[0,1,2]], MLP converts it to
[[1,1,0],[1,1,1]]. The indices where its one are the classes to which a sample belongs. A sample with output
[1,1,0], for example, says it belongs to classes 0 and 1. After training, during prediction, the nonactivation outputs undergo the logistic/sigmoid activation giving probabilities of each class that could constitute the sample. So an output can be something like
[0.8,0.7,0.1]. Using the common threshold
0.5, values equal or larger than that are rounded to 1, otherwise to 0. Therefore, the final output becomes
[1,1,0], meaning the sample belongs to classes 0 and 1, and not 2.
Please enlighten me if this is appropriate, or if there is a more a standard approach.
Thanks in advance...