Concept

Classification Loss

Let sjs^j be an input sample from domain j = 1, 2, . . . , k, k being the number of domains employed during training. Let E be the shared encoder, and DjD_j be the WaveNet decoder for domain j. Let C be the domain classification network, and O(s, r) be the random augmentation procedure applied to a sample s with a random seed r. The classification loss is: jsjλL(C(E(O(sJ,r))),j)\sum_j \sum_{s^j} \lambda L(C(E(O(s^J,r))),j)

0

5

Updated 2021-04-04

Tags

Data Science

Related