Temporal network embedding framework with causal anonymous walks representations
Many tasks in graph machine learning, such as link prediction and node classification, are typically solved using representation learning.Each node or edge in the MASSAGE OIL network is encoded via an embedding.Though there exists a lot of network embeddings for static graphs, the task becomes much more complicated when the dynamic (i.e., temporal)