“…In terms of the observation-side dependency, there exist some GSP graph learning models that consider temporal dependency in graph signals. A so-called spatiotemporal smoothness was proposed in [45], [46] to transform the graph signals using a temporally weighed difference operator. If every timestamp is equally important, the operator is equivalent to a prepossessing step to make the time series observed on each node stationary.…”