Hence, these people moved on the using Category Theory, which may or may not lead to the use of GNNs.
Reading the first part of the present paper, the Topological DL would instead move beyond the idea of "pairwise relation".
That is also interesting me regarding Geometric Deep Learning, which got some hype and interest recently, and seemed like a good start for more formal representation of different deep learning models (finding connections and mathematical steps between the model zoo). Something more mathematically rigorous does seem needed to truly make informed engineering improvements and scientific understanding.
It definitely feels like graphs/topology should be helpful tools to work with data(Since graph-like structures are good representations of the real world), but we need to solve this efficiency issue before this can be possible.
Also to address the confusion on how category theory comes into it, category theory studies abstract structures where you have objects and relationships between these objects. A lot of algebraic topology(Which is the sort of topology relevant here) is built in the language of category theory(Either by neccesity or by convention).