You're currently viewing an old version of this dataset. To see the current version, click here.

Graph Neural Networks Including SparSe inTerpretability (GISST)

Graph Neural Networks (GNNs) are versatile, powerful machine learning methods that enable graph structure and feature representation learning, and have applications across many domains. For applications critically requiring interpretation, attention-based GNNs have been leveraged. However, these approaches either rely on specific model architectures or lack a joint consideration of graph structure and node features in their interpretation. Here we present a model-agnostic framework for interpreting important graph structure and node features, Graph neural networks Including SparSe inTerpretability (GISST). With any GNN model, GISST combines an attention mechanism and sparsity regularization to yield an important subgraph and node feature subset related to any graph-based task.

Data and Resources

This dataset has no data

Cite this as

Chris Lin, Gerald J. Sun, Krishna C. Bulusu, Jonathan R. Dry, Marylens Hernandez (2024). Dataset: Graph Neural Networks Including SparSe inTerpretability (GISST). https://doi.org/10.57702/4nz3lndm

Private DOI This DOI is not yet resolvable.
It is available for use in manuscripts, and will be published when the Dataset is made public.

Additional Info

Field Value
Created December 3, 2024
Last update December 3, 2024
Author Chris Lin
More Authors
Gerald J. Sun
Krishna C. Bulusu
Jonathan R. Dry
Marylens Hernandez