Structural Inductive Biases in Emergent Communication
Abstract
Graph neural networks enable agents to develop more compositional languages in graph referential games compared to traditional models.
In order to communicate, humans flatten a complex representation of ideas and their attributes into a single word or a sentence. We investigate the impact of representation learning in artificial agents by developing graph referential games. We empirically show that agents parametrized by graph neural networks develop a more compositional language compared to bag-of-words and sequence models, which allows them to systematically generalize to new combinations of familiar features.
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