Publication | Open Access
DEFactor: Differentiable Edge Factorization-based Probabilistic Graph Generation
55
Citations
1
References
2018
Year
EngineeringMolecular BiologyGraph ProcessingMolecular DesignData ScienceBiological Network VisualizationProbabilistic Graph TheoryGraph Neural NetworkDe Novo Drug DesignComputer ScienceMolecular Property PredictionBioinformaticsGraph TheoryComputational BiologySynthetic BiologyGraph Generative ModelsConditional Graph GenerationGraph AnalysisSystems BiologyMedicineDrug Discovery
Generating novel molecules with optimal properties is a crucial step in many industries such as drug discovery. Recently, deep generative models have shown a promising way of performing de-novo molecular design. Although graph generative models are currently available they either have a graph size dependency in their number of parameters, limiting their use to only very small graphs or are formulated as a sequence of discrete actions needed to construct a graph, making the output graph non-differentiable w.r.t the model parameters, therefore preventing them to be used in scenarios such as conditional graph generation. In this work we propose a model for conditional graph generation that is computationally efficient and enables direct optimisation of the graph. We demonstrate favourable performance of our model on prototype-based molecular graph conditional generation tasks.
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