Generative Code Modeling with Graphs

  • Marc Brockschmidt ,
  • Miltos Allamanis ,
  • Alex Gaunt ,
  • Alex Polozov

7th International Conference on Learning Representations |

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Generative models for source code are an interesting structured prediction problem, requiring to reason about both hard syntactic and semantic constraints as well as about natural, likely programs. We present a novel model for this problem that uses a graph to represent the intermediate state of the generated output. The generative procedure interleaves grammar-driven expansion steps with graph augmentation and neural message passing steps. An experimental evaluation shows that our new model can generate semantically meaningful expressions, outperforming a range of strong baselines.

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