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Graph Residual Flow for Molecular Graph Generation (1909.13521v1)

Published 30 Sep 2019 in cs.LG and stat.ML

Abstract: Statistical generative models for molecular graphs attract attention from many researchers from the fields of bio- and chemo-informatics. Among these models, invertible flow-based approaches are not fully explored yet. In this paper, we propose a powerful invertible flow for molecular graphs, called graph residual flow (GRF). The GRF is based on residual flows, which are known for more flexible and complex non-linear mappings than traditional coupling flows. We theoretically derive non-trivial conditions such that GRF is invertible, and present a way of keeping the entire flows invertible throughout the training and sampling. Experimental results show that a generative model based on the proposed GRF achieves comparable generation performance, with much smaller number of trainable parameters compared to the existing flow-based model.

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Authors (5)
  1. Shion Honda (3 papers)
  2. Hirotaka Akita (4 papers)
  3. Katsuhiko Ishiguro (8 papers)
  4. Toshiki Nakanishi (2 papers)
  5. Kenta Oono (15 papers)
Citations (42)

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