approaches is orthogonal projection. The idea of this approach is to learn each task by
updating the network parameters or weights only in the direction orthogonal to the subspace
spanned by all previous task inputs. This ensures no interference with tasks that have been
learned. The system OWM that uses the idea performs very well against other state-of-the-art
systems. In this paper, we first discuss an issue that we discovered in the mathematical …