posted on 2023-05-15, 19:41authored byHossein Hajiabolhassan, Zahra Taheri, Ali Hojatnia, Yavar Taheri Yeganeh
To
accurately predict molecular properties, it is important
to
learn expressive molecular representations. Graph neural networks
(GNNs) have made significant advances in this area, but they often
face limitations like neighbors-explosion, under-reaching, oversmoothing,
and oversquashing. Additionally, GNNs tend to have high computational
costs due to their large number of parameters. These limitations emerge
or increase when dealing with larger graphs or deeper GNN models.
One potential solution is to simplify the molecular graph into a smaller,
richer, and more informative one that is easier to train GNNs. Our
proposed molecular graph coarsening framework called FunQG, uses Functional groups as building blocks to determine
a molecule’s properties, based on a graph-theoretic concept
called Quotient Graph. We show through experiments
that the resulting informative graphs are much smaller than the original
molecular graphs and are thus more suitable for training GNNs. We
apply FunQG to popular molecular property prediction benchmarks and
compare the performance of popular baseline GNNs on the resulting
data sets to that of state-of-the-art baselines on the original data
sets. Our experiments demonstrate that FunQG yields notable results
on various data sets while dramatically reducing the number of parameters
and computational costs. By utilizing functional groups, we can achieve
an interpretable framework that indicates their significant role in
determining the properties of molecular quotient graphs. Consequently,
FunQG is a straightforward, computationally efficient, and generalizable
solution for addressing the molecular representation learning problem.