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.
翻译:为了进行交流,人类将复杂的思想和属性的表达方式分成一个单词或一个句子。我们通过开发图示优选游戏来调查在人造剂中进行代言学习的影响。我们从经验上表明,通过图象神经网络实现的代理器与一袋字和顺序模型相比,形成了一种更具有构成性的语言,从而可以系统地将其归纳为熟悉特征的新组合。