be controlled in tasks such as style transfer. While orthogonal decomposition is directly
identifiable when the given classifier is linear, we formally define a notion of orthogonality in
the non-linear case. We also provide a surprisingly simple method for constructing the
orthogonal classifier (a classifier utilizing directions other than those of the given classifier).
Empirically, we present three use cases where controlling orthogonal variation is important …